Brainy Neurals

AI for Retail: Footfall Analytics, Loss Prevention, and Store Intelligence — Built on Your Existing Cameras

90% of retail stores already have CCTV cameras. Nobody watches the footage. We turn those cameras into intelligent sensors that count every customer, map every movement pattern, detect shrinkage in real-time, and optimize your store layout — without replacing a single camera. Computer vision retail analytics that delivers 96% counting accuracy, 50% shrinkage reduction, and 45% shorter queue wait times. Every system runs on edge hardware at the store, processes video locally with zero cloud dependency, and never stores a single face or personally identifiable image. Video analytics solutions that transform passive security cameras into revenue-generating intelligence platforms.

+70

Production AI Projects

50%

Shrinkage Reduction

Leverages

Existing CCTV Systems

Privacy First

Zero Facial Recognition

NVIDIA

Certified AI Architect

ISO 27001

Certified

Supported by Leading Tech & Growth Partners

Founded by Mitesh Patel — NVIDIA Certified AI Architect · Upwork Top Rated Plus (Individual Profile) →

— INDUSTRY LANDSCAPE

The Retail AI Landscape — Why $94.5 Billion in Annual Shrinkage Is the Burning Platform

$94.5B

Annual US Retail Shrinkage (NRF, 2025)

50-56%

Shrinkage Reduction via AI Loss Prevention

89%

Retailers Now Using or Piloting AI (NVIDIA, 2025)

$12.56B

CV in Retail Market by 2033 25.4% CAGR

The computer vision AI in retail market was valued at $1.66 billion in 2024 and is projected to reach $12.56 billion by 2033 at a 25.4% CAGR (Grand View Research, 2025). The broader computer vision for retail market reached $4.23 billion in 2025 and is forecast to grow to $12.19 billion by 2030 at 23.5% CAGR (Business Research Company, 2026). The overall AI in retail market reached $9.8-$12.17 billion in 2025 and is projected to exceed $53-$138 billion by 2034-2035, depending on scope definition (Fact.MR, IndustryResearch.biz). Whichever estimate you use, the trajectory is the same: retail AI is entering hyper-growth, and computer vision is the fastest-growing segment within it.

The burning platform is shrinkage. The National Retail Federation reports that retail shrinkage costs US retailers $94.5 billion annually — representing 1.4-1.6% of total retail revenue lost to theft, employee fraud, administrative errors, and vendor fraud. Computer vision for loss prevention has been shown to reduce shrinkage by 50-56% (Gitnux, AI Monk Labs, 2026). A single grocery store losing $200,000 per year to shrinkage can recover $100,000-$112,000 through AI loss prevention deployed on existing cameras. The ROI calculus is not debatable.

Beyond loss prevention, the adoption numbers are accelerating. 89% of retailers now actively use or pilot AI projects (NVIDIA, 2025). 91% of retail IT leaders prioritize AI as their top technology implementation by 2026 (Gartner). 48% of brick-and-mortar retailers already use computer vision for shelf analytics and loss prevention (IndustryResearch.biz). 63% of retailers consider AI essential for maintaining competitive advantage (Everseen, 2025). Yet the majority of AI spending still flows to online retail — physical store AI, particularly computer vision, remains massively underinvested relative to its ROI potential.
This is where Brainy Neurals operates. We build AI smart store technology and custom retail AI development solutions — not SaaS platforms, not subscription analytics dashboards, but production-grade computer vision for retail development — custom-built systems that process your existing CCTV camera feeds on edge hardware at the store level. AI people counting, heat map generation, loss prevention alerting, AI shelf monitoring retail, and AI queue management retail — all running locally, all privacy-compliant, all custom-built for your specific store layouts, camera positions, and operational requirements. Our founder, Mitesh Patel, is an NVIDIA Certified AI Architect who has deployed multi-camera video analytics systems across retail, warehouse, and manufacturing environments — processing 16+ simultaneous camera feeds on a single NVIDIA Jetson device drawing under 50 watts of power. When V-Count, FootfallCam, and RetailNext sell subscription-based SaaS platforms at $50,000-$200,000 per year, we build equivalent capabilities with full IP ownership and zero ongoing subscription fees.

— core capability

AI People Counting & Footfall Analytics

AI people counting retail is the foundational capability that makes every other retail metric possible. As an AI retail analytics development company, we build systems that go far beyond basic counting. Without accurate footfall data, you cannot calculate conversion rate (the single most important retail KPI), cannot optimize staffing against traffic patterns, cannot measure marketing campaign impact, and cannot benchmark store performance across locations. Modern AI footfall analytics delivers 96% counting accuracy — far exceeding manual counting, infrared beam counters, and legacy thermal sensors (AI Monk Labs, 2026). Our retail video analytics development expertise means every system is custom-built for your specific store environment.

What we build for AI footfall analytics retail:

  • AI footfall analytics retail — real-time occupancy, daily/weekly/monthly traffic trends, year-over-year comparison
  • AI staff exclusion analytics — filter employees from customer data using badge detection, uniform recognition, or staff-only entry tracking.
  • AI customer counting retail — track footfall at store and zone level. monitor traffic across departments, displays, and in-store zones.
  • AI conversion rate optimization retail — footfall ÷ transactions. 1,247 visitors, 291 purchased = 23.3% conversion baseline
Technical architecture:
Overhead or entrance-mounted cameras (existing CCTV) → Person detection (YOLOv8/YOLO11 optimized for retail) → Multi-object tracking (ByteTrack) → Counting line/zone crossing logic → Staff exclusion model → Real-time dashboard. All processing on NVIDIA Jetson edge hardware at the store — no video leaves the premises.
— core capability

AI Heat Maps & Customer Behavior Analytics

AI heat map analytics retail transforms CCTV footage into actionable store layout intelligence. A heat map shows where customers spend time — revealing that your premium product display in the back-left corner gets 3% of customer traffic while your entrance promotional table gets 47%. This data directly drives AI store layout optimization, product placement, and merchandising strategy.

What we build:

  • AI heat map analytics — real-time and historical heat maps. Hot zones (red) = high engagement. Cold zones (blue) = areas customers avoid. Compare before and after layout changes.
  • AI dwell time analytics retail — measure how long customers spend in each zone. 7+ minutes = 3x more likely to purchase in fashion stores.
  • AI customer journey tracking store — map actual walking paths, reveal common journeys, and differentiate buyer vs non-buyer paths.
  • AI customer behavior analytics retail — classify behavior: browsing, engagement, abandonment, and basket building for targeted interventions.
— core capability

AI Loss Prevention & Shrinkage Reduction

AI loss prevention retail directly addresses the $94.5 billion annual shrinkage problem. Traditional loss prevention relies on security guards watching monitors (impossible to monitor 20+ cameras simultaneously), post-incident video review (the item is already gone), and electronic article surveillance (EAS tags that determined shoppers routinely circumvent). AI shifts loss prevention from reactive to proactive — detecting suspicious behavior patterns in real-time before merchandise leaves the store.

What we build:

  • AI theft detection retail store — concealment detection, extended loitering in high-value zones, repeated visits to same display, coordinated group activity. No facial recognition — behavior-based only.
  • AI shrinkage reduction retail — POS integration detects scan avoidance, sweet-hearting, coupon fraud, and refund fraud patterns via intelligent video analytics.
  • AI video surveillance that correlates video evidence with POS transaction data — creating an exception report queue with video evidence already attached. Investigation time: 15-20 min vs 3-4 hours.
  • AI shoplifting detection system — real-time mobile alerts to store managers and LP teams when behavior thresholds are triggered.

Your stores lose $94.5 billion per year to shrinkage. Your cameras only watch it happen. AI stops it.

We deploy loss prevention AI on your existing CCTV cameras — no new hardware, no facial recognition, no privacy concerns. 50% shrinkage reduction demonstrated across deployments.
— core capability

AI Shelf Monitoring & Inventory Intelligence

AI shelf monitoring retail automates the most labor-intensive task in grocery and general merchandise retail: verifying that shelves are stocked, products are in the correct location, and planogram compliance is maintained. A typical grocery store has 30,000-50,000 SKUs across 100+ aisles. Manual shelf walks take 2-4 hours and happen once or twice per day — meaning out-of-stock conditions persist for hours before anyone notices.

What we build:

  • AI planogram compliance — compare actual shelf conditions against the merchandising plan. Detect wrong product, missing facings, incorrect price labels, and non-compliant promotions.
  • AI out of stock detection retail — identify empty shelf positions in real-time. Out-of-stock costs retailers 4-8% of potential revenue (Harvard Business Review).
  • AI inventory tracking retail store — estimate product quantities, monitor depletion rates, and predict restock timing using computer vision .
— core capability

AI Queue Management & Checkout Optimization

AI queue management retail solves a problem that costs retailers both revenue and loyalty: long checkout lines. Research consistently shows that 30-40% of customers who abandon a purchase in a physical store cite long wait times as the primary reason. AI queue management reduces wait times by 45% (Gitnux) by providing real-time queue monitoring, predictive staffing alerts, and dynamic lane opening recommendations.

What we build:

  • AI queue management retail — count customers per queue, measure wait time per position, predict queue growth. Alert managers to open lanes before customers abandon.
  • AI checkout optimization retail — analyze throughput by lane, cashier, and time. Identify consistently slow lanes, optimal configurations, and revenue impact.
  • AI self checkout technology monitoring — detect self-checkout fraud (scan avoidance, barcode switching) and operational issues using video analytics.
— Industry Deep Dives

AI Solutions for Every Retail Format

From grocery aisles to luxury showrooms, from QSR drive-throughs to e-commerce fulfillment — we build AI that fits your specific retail operation.
AI for Grocery Stores

AI for grocery stores addresses the unique challenges of food retail: perishable inventory that expires, massive SKU counts (30,000-50,000 per store), thin margins (1-3% net profit), and shrinkage from both theft and spoilage. A single grocery store generates 500-2,000 customer visits per day, each navigating 100+ aisles of product.

What we deploy for grocery and supermarket operations: AI produce quality monitoring using computer vision to assess freshness indicators — alerting staff when products approach end-of-shelf-life. AI dairy and refrigerated section temperature monitoring using IoT sensors integrated with computer vision. AI checkout lane optimization that dynamically recommends lane openings based on real-time occupancy. AI bakery and deli production planning using foot traffic predictions to optimize production quantities — reducing end-of-day waste.

Compliance:
FDA Food Safety Modernization Act (FSMA), local health regulations, OSHA, ADA, PCI DSS, state weights and measures. Temperature monitoring AI generates compliance documentation for HACCP plans.
AI for Fashion Retail
AI for fashion retail transforms visual merchandising from art into science. Fashion retail operates on subjective buyer preferences — but AI reveals objective patterns in how customers interact with displays, which fixtures drive engagement, and which store zones convert browsers into buyers.

What we deploy: AI fitting room analytics that tracks fitting room traffic (occupancy, wait times, abandonment before trying), correlating usage with purchase rates — fitting room conversion rates (60-70%) are dramatically higher than floor conversion rates (15-25%). AI window display effectiveness measurement that counts pass-by traffic, measures capture rate, and enables A/B testing of AI visual merchandising optimization with hard data. AI store zone engagement analytics that maps customer interaction with specific fixtures, tables, and wall displays.
AI for Shopping Malls
AI for shopping malls provides mall management with tenant-level traffic intelligence that drives leasing decisions, marketing investment allocation, and operational planning. A shopping mall with 100+ tenants needs to know not just total mall footfall but traffic at every tenant entrance, common area utilization, and customer flow patterns between tenants.

What we deploy: AI tenant-level footfall counting at every store entrance — providing objective data for lease negotiations, tenant performance assessment, and marketing campaign attribution. AI common area utilization analytics that monitor food courts, seating areas, and event spaces. AI crowd analytics that detect crowd density in real-time, identify congestion points, and support emergency evacuation planning with live occupancy data by zone/
AI for Quick Service Restaurants
AI for quick service restaurants targets the metric that defines QSR profitability: speed of service. A QSR that reduces average service time from 4 minutes to 3 minutes can serve 25% more customers during peak hours without adding staff.

What we deploy: AI drive-through analytics — count cars, measure time at each station (menu board, order, payment, pickup), identify bottlenecks. AI kitchen activity monitoring — track food preparation workflow, ensure correct order assembly, detect when kitchen staff are overwhelmed. AI dining area monitoring — table occupancy, turn times, cleanliness status.
AI for Convenience Stores
AI for convenience stores operates at the intersection of retail and security — convenience stores have the highest per-square-foot shrinkage rate of any retail format due to compact layouts, high-value merchandise (tobacco, alcohol, lottery), and limited staff coverage. A single convenience store typically has 4-8 existing CCTV cameras that provide excellent coverage for AI deployment.

What we deploy: AI loss prevention calibrated for convenience store environments — concealment detection, product stuffing, walk-out without payment, and age-restricted product handling violations. AI fuel drive-off detection at fuel pumps — capture license plates, detect completed fueling without payment. AI tobacco and alcohol display monitoring that tracks interaction with age-restricted products.
AI for Pharmacy Retail
AI for pharmacy retail serves a uniquely regulated retail environment where product security, compliance, and customer service intersect. Pharmacies handle controlled substances with DEA reporting requirements, high-value cosmetics and OTC medications prone to theft, and prescription fulfillment workflow that requires both speed and accuracy.

What we deploy: AI controlled substance display monitoring using camera systems that track interaction with locked display cases, detect tampering attempts, and log access events for DEA compliance. AI prescription pickup area queue management that monitors the pharmacy counter queue, alerts staff when wait times exceed targets, and provides estimated wait times through digital signage.
AI for E-commerce Fulfillment
AI for e-commerce fulfillment centers applies the same computer vision, edge AI, and video analytics technology used in retail stores to the warehouse environment. E-commerce fulfillment combines high-volume operations, extreme accuracy requirements (wrong-item rates below 0.1%), and significant returns processing challenges (20-30% return rates for apparel).

What we deploy: AI pick accuracy verification at packing stations — catching wrong-item errors before shipment ($15-$25 per error savings). Warehouse safety AI monitoring and AI safety monitoring system for fulfillment centers. AI returns processing — verify product identity, assess condition, make disposition decisions. AI package damage detection — inspect outbound packages before loading.
AI for Department Stores, Furniture, Luxury, Automotive & Franchise Chains
Department stores and big box retailers (50,000-200,000+ sq ft) get department-level analytics that roll up to store-level intelligence: which departments drive traffic, which convert, and which experience shrinkage. AI retail operations automation generates daily reports across departments while AI dynamic pricing retail strategies use traffic and conversion data to inform promotional timing and markdown decisions.

Furniture and home improvement stores have unique behavior: high dwell times (20-45 min avg), consultative sales. AI tracks customer engagement with room displays, showroom navigation patterns, and sales associate interaction frequency.

Jewelry and luxury retail demands highest-precision loss prevention — a single theft can cost $5,000-$50,000+. AI monitors display case interaction and provides real-time alerts when high-value items are exposed.

Automotive dealerships use AI to monitor lot traffic (which vehicles attract walk-around attention), service lane management, and customer flow between showroom and service areas.

Franchise operations need standardized analytics across locations operated by different franchisees. AI provides brand-level reporting comparing footfall, conversion, queue times, and AI planogram compliance across every location.
— For Small & Independent Retailers

AI for Independent Retailers, Single-Store Owners & Small Chains — Practical Solutions Starting at $5,000

Not every retailer is Walmart with a $1 billion technology budget. We build specifically for independent retailers and small chains (2-10 stores) — affordable, practical AI analytics that pay for themselves within months.
Footfall Counting for Independent Retailers
A boutique clothing store owner has no idea how many people visit each day. She knows her transaction count (42/day) but doesn’t know that 280 people actually entered — a 15% conversion rate, not the “pretty busy” she assumes.
AI people counting on a single existing CCTV camera. NVIDIA Jetson Orin NX edge device mounts discreetly. Real-time footfall dashboard on the owner’s phone. Daily/weekly/monthly reports with conversion rate. ROI visible within 60 days

$5,000 – $8,000 installed │ Near-zero monthly cost

Loss Prevention Using Existing AI Based CCTV Camera Systems
A convenience store loses $800-$1,500/month to shoplifting and employee pilferage. Owner has 6 cameras recording 24/7, but reviews footage only after discovering discrepancies — days later.
AI based camera solutions that overlay analytics on existing CCTV — detecting concealment, loitering, unusual off-hours activity. AI based CCTV camera processing runs locally on edge. No cloud, no subscription, no facial recognition. 30-50% shrinkage reduction.

$8,000 – $15,000 installed │ Payback in 5-8 months

Queue Management for Small Restaurants and Cafes
A popular lunch spot has 30 seats and 15-minute average wait at peak. The owner knows customers leave but has no data on how many or when peak arrives.
AI queue analytics on a single camera. Count queue length, measure wait time, track walkaway rate. Daily reports: peak times, walkaway rate by queue length, projected revenue impact of wait-time reduction.

$5,000 – $10,000 installed

More SME Retail AI Use Cases
Staff-to-customer ratio monitoring: AI counts customers per zone vs staff presence — alerts when high-traffic zones are understaffed.

Window display A/B testing: AI measures capture rate before and after display changes. Multi-store benchmarking: Standardized footfall, conversion, and dwell time across 2-10 store chains.

Custom pricing │ Start with a single-store POC

— Privacy & Compliance

How Retail AI Works Without Facial Recognition

Our entire retail AI architecture is designed around a fundamental principle: anonymous analytics only. We count people, track movement patterns, and analyze behavior — we never identify individuals.

No Facial Recognition, No PII

Our retail AI systems do not use facial recognition technology. Person detection identifies that a human body is present — not who that human is. Movement tracking follows anonymous body silhouettes, assigning temporary tracking IDs discarded when the person exits the camera view. No personally identifiable information is collected, processed, stored, or transmitted.

GDPR Complianceliance

For retailers in the EU: legitimate interest basis for processing, privacy-by-design architecture (anonymous processing at the edge, no central database), data minimization (only aggregated analytics stored), and clear notice to data subjects. We provide template privacy signage for store entry points.

CCPA/CPRA & BIPA Compliance

For California and Illinois retailers: anonymous silhouette tracking does not constitute personal information under CCPA or biometric identifiers under BIPA. No data is sold to third parties. Compliant by design.

Edge Processing & PCI DSS

All video processing happens on edge hardware at the store. Raw footage never leaves the premises. For checkout areas, camera placement and zone masking ensure payment card information is never captured in the video stream.

AI on Existing Cameras: Proven Results

$94.5B

Annual Retail Shrinkage

50%

Shrinkage Reduction Demonstrated

96%

Footfall Counting Accuracy

45%

Queue Time Reduction

3-6 month payback period. Zero subscription fees. Full IP ownership.
— Assessment

Retail AI Readiness Assessment

Assess your organization across five dimensions to determine the fastest path to retail AI deployment.

1

Camera Infrastructure
0–20 points
Do your stores have existing CCTV cameras? How many per store? Resolution (720p, 1080p, 4K)? IP-connected or analog? 1080p IP cameras provide optimal results — but our systems work with 720p and analog cameras through encoder conversion.

2

Network Connectivity
0–20 points
Edge AI runs locally without internet — but cloud dashboard access for multi-store reporting requires connectivity. Electrical power near camera locations (a single outlet, under 50W draw)?

3

POS & Inventory Integration
0–20 points
What POS system? (Shopify, Square, Lightspeed, Clover, Oracle Micros, NCR). API access for transaction data integration? POS integration enables conversion rate calculation — without it, AI still delivers footfall, heat maps, and queue analytics.

4

Staff Adoption Readiness
0–20 points
Are managers comfortable with technology? Have stores adopted any tech tools in the past 3 years? Is there a designated AI champion (operations director, LP director)?

5

Analytics Maturity
0–20 points
Do you currently measure conversion rate? Use any people counting tools? Measure performance beyond transaction count and revenue? Do managers review data regularly?
80-100

Deploy Now

Your stores are ready. Start with a single-store POC to validate accuracy and ROI.

Start Your POC →

50-79

POC First

Install AI on one high-traffic store. Validate results. Then decide on rollout.

Get a POC Assessment →

Below 50

Consulting Engagement

We assess camera infrastructure, network, and operational readiness first.

Schedule an Assessment →

— Integration

How Retail AI Connects to Your Systems

POS Integration
Shopify · Square · Lightspeed · Clover · Oracle Micros · NCR · Toast
AI footfall + POS transactions = conversion rate. Loss prevention AI correlates video events with transaction records for exception-based reporting.
Inventory Management
NetSuite · TradeGecko · Cin7 · Fishbowl
AI shelf monitoring alerts trigger restock orders when levels drop below thresholds. Closes the loop between visual shelf condition and inventory action.
CRM & Marketing
Salesforce · HubSpot · Klaviyo
AI traffic data feeds CRM for campaign attribution — measuring how campaigns impact store foot traffic, not just online clicks.
Staff Scheduling
Deputy · When I Work · Homebase · 7shifts
AI footfall predictions inform staffing — recommending levels based on predicted traffic rather than historical averages.
Digital Signage

BrightSign · Scala · Navori

AI occupancy and queue data triggers dynamic signage — directing customers to shorter queues or promoting products in low-traffic departments.
Business Intelligence
Tableau · Power BI · Looker
All analytics data via APIs — combining in-store AI intelligence with online analytics, supply chain data, and financial reporting.
— How We Solve It

Your Retail Problem → Our AI Solution

Your Retail Problem The AI Solution Our Service
You don't know how many customers visit your stores each day AI people counting at 96% accuracy on existing cameras — footfall, conversion rate, traffic trends, staff exclusion. Video Analytics & Surveillance →
Shrinkage costs you $94.5B industry-wide and you can't stop it with guards AI loss prevention detects suspicious behavior in real-time — 50% shrinkage reduction without facial recognition. Video Analytics & Surveillance →
You don't know which zones drive engagement vs dead space AI heat map and dwell time analytics reveal customer movement patterns, hot zones, and dead zones. Computer Vision Development →
Shelves go empty for hours before anyone notices AI shelf monitoring and out-of-stock detection alerts staff in real-time. Computer Vision Development →
Long checkout queues drive customers away AI queue management reduces wait times by 45% through predictive lane opening. Video Analytics & Surveillance →
You need to search hours of footage to investigate an incident Intelligent NVR enables natural language search — "show me everyone near electronics display between 2-3 PM Thursday". Video Analytics — Intelligent NVR →
E-commerce returns processing is slow and inconsistent Computer vision inspects returned items — verifying identity, assessing condition, making disposition decisions. Computer Vision Development →
AI automation services for repetitive retail reporting Automated daily store reports, weekly summaries, and exception alerts from AI analytics data. AI Agent & Copilot Development →
You want to validate AI on one store before rolling out 4-6 week proof of concept on your store, your cameras, your traffic. AI Proof of Concept →
You need retail AI strategy and build-vs-buy guidance AI consulting services — readiness assessment, use case prioritization, privacy compliance design. AI Consulting & Strategy →
— PROVEN RESULTS

Retail AI Projects We have Delivered

Retail — Store Intelligence

Multi-Camera AI Analytics — From Zero Data to Real-Time Store Intelligence

Multi-camera AI analytics deployed across retail operations. Single NVIDIA Jetson AGX Orin processes 16 camera feeds simultaneously using DeepStream multi-stream pipeline. Real-time footfall counting at every entrance, zone-level heat maps updated every 30 seconds, queue monitoring with automated alerting, and dwell time analytics per department.

Built with: YOLOv8, ByteTrack, DeepStream, TensorRT INT8, NVIDIA Jetson AGX Orin, custom analytics dashboard
No Data
96%
Counting accuracy
Retail — Loss Prevention

AI Loss Prevention with POS Integration — From Hours of Review to Instant Evidence

AI loss prevention integrating video analytics with POS transaction data. Computer vision detects scan avoidance, concealment, and checkout exceptions in real-time. Video evidence automatically linked to transaction records, creating an exception report queue for the LP team.

Built with: Custom behavior detection model, POS API integration, exception management dashboard, edge deployment
3-4 hrs/incident
15 min
Investigation time
Retail — Shelf Intelligence

AI Shelf Monitoring — From 2-4 Hour Gaps to 30-Minute Detection

AI shelf monitoring for grocery/retail using camera-based product detection and planogram comparison. System monitors shelf conditions across departments, detecting out-of-stock, misplaced products, and AI planogram compliance violations continuously.

Built with: Custom product detection model, planogram comparison engine, mobile notification system, edge deployment  
2-4 hrs gap
< 30 min
OOS detection time
— FAQ

Frequently Asked Questions

AI retail analytics for a single store typically costs $5,000-$15,000 for initial setup on existing cameras (depending on camera count and use cases), plus near-zero ongoing costs for on-device processing. There are no monthly subscription fees — you own the system. For comparison, SaaS people counting platforms charge $12,000-$50,000 per store per year. Our custom-built approach costs more upfront but eliminates recurring fees. For a 10-store chain, AI analytics pays for itself within 3-6 months. Start with a single-store POC

Yes — this is our standard deployment model. If your store has existing IP cameras (most CCTV installed in the last 7-10 years), we connect directly via RTSP streams. No camera replacement, no new wiring. For older analog cameras, we use encoders ($50-$100 per camera). The AI runs on a compact edge device (NVIDIA Jetson, about the size of a paperback book) installed in your back office. Learn about our AI based camera solutions

Our retail AI does not use facial recognition. Period. We detect human body presence and track anonymous silhouettes — no faces are captured, analyzed, stored, or transmitted. This approach is legal in all US states and EU jurisdictions. We provide template privacy notice signage for store entry points. For retailers subject to BIPA (Illinois) or similar laws, our system is compliant by design. Read about our privacy-first approach
AI people counting achieves 95-98% accuracy — significantly outperforming infrared beam counters (85-90%), thermal sensors (90-92%), and manual counting. Key factors: camera resolution (1080p recommended), angle (overhead at 3-4m height optimal), and lighting (our models work in standard retail conditions including variable natural light). See our Computer Vision capabilities

Most retailers see measurable ROI within 3-6 months. Fastest-payback use cases: (1) Staffing optimization — 5-10% labor cost savings from first schedule adjustment. (2) Loss prevention — 50% shrinkage reduction on a store losing $200K/year = $100K savings. (3) Queue management — reducing walkaway rate by 10% at a $2M store = $200K recovered. Calculate your ROI with a POC

Yes. For physical stores: footfall, heat maps, loss prevention, shelf monitoring, queue management. For e-commerce fulfillment: pick accuracy verification, package damage detection, returns processing, warehouse safety monitoring. Same underlying technology — only trained models and business logic differ. See our full logistics capabilities

Cameras capture shelf images at regular intervals. Computer vision detects: product presence/absence at each position, quantity estimation, product identification against planogram SKU list, and price label positioning. The system compares actual state against the planogram and generates compliance scores with exception details. See our Computer Vision capabilities
Real-time footfall count, conversion rate (footfall vs POS transactions), store heat map (updated every 30-60 seconds), zone traffic breakdown, dwell time by zone, queue status (length and wait time per lane), loss prevention exception queue, hourly/daily/weekly/monthly trends, and multi-store comparison for chains. Accessible via web browser — tablet, laptop, or boardroom display. Schedule a dashboard demo

Typical pace: 1 store for POC (4-6 weeks), 5-10 stores in first wave (2-4 weeks each, parallelized), then 20-50 stores per month once standardized. The limiting factor is physical installation — once AI models are trained and validated on your store format, scaling is a configuration exercise. Plan your rollout strategy

Start with one store and the use case that matters most. For most retailers, start with footfall counting — fastest to deploy (1-2 weeks), requires minimal integration, provides immediate insight (true conversion rate on day one). Our process: store assessment (1 day) → edge deployment (1-2 weeks) → 4-6 week POC → results report with ROI projection. Total: $10,000-$20,000. Most retailers who complete a POC deploy across their full portfolio within 6 months. Start with a single-store POC

- Let’s Build AI for Your Everyday Challenges

Among the Top 3% of Global AI Professionals.

50+

AI SYSTEMS IN PRODUCTION

9+

YEARS IN PRODUCTION AI
Led by an NVIDIA Certified AI Architect. Backed by AWS, Microsoft & NVIDIA ecosystems. ISO 27001 certified for enterprise-grade security. Every call is a free technical assessment — not a sales pitch.

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