Retail & In-Store Analytics
Shelf monitoring, customer movement analysis, product detection & in store retail AI

AI and Computer Vision for Retail and In-Store Intelligence
Retailers and consumer brands increasingly rely on AI to understand customer behavior, optimize store operations, and ensure accurate shelf execution. Computer vision supports tasks such as product detection, shelf condition monitoring, customer flow analysis, and queue management. These applications require detailed and consistent annotated datasets that reflect real store conditions, lighting variations, and diverse product layouts.
DataVLab provides specialized data labeling for in store analytics, including product recognition, shelf segmentation, stock level detection, customer tracking, and planogram compliance. Our annotation workflows support multi camera setups, high density product arrangements, and continuous video streams from retail environments.
We help retailers and technology providers develop AI systems that improve merchandising accuracy, reduce operational costs, and deliver better in store experiences for customers.
Product and Shelf Detection
Bounding boxes and segmentation for products, shelves, empty spaces, and misplaced items to support shelf intelligence and planogram validation
Customer Flow and Movement Tracking
Annotation of customer paths, dwell time, walking patterns, and interactions to support behavior analysis and store layout optimization
Stock Level and Restocking Analysis
Labeling of product facings, low stock zones, and out of stock events to support automated replenishment systems
Checkout and Queue Monitoring
Tracking of customer lines, cashier activity, and wait times to improve operational efficiency and customer experience
Shopping Cart and Basket Detection
Annotation of carts, baskets, and objects carried by customers for behavior modeling and movement analysis
Multi Camera Synchronization for Store Analytics
Consistent IDs across multiple camera views to support full store movement tracking and advanced analytics systems
Annotation & Labeling for AI
Unlock the full potential of your AI application with our expert data labeling tech. We ensure high-quality annotations that accelerate your project timelines.

Enhance Computer Vision
with Accurate Image Labeling
Precise labeling for computer vision models, including bounding boxes, polygons, and segmentation.

Unleashing the Potential
of Dynamic Data
Frame-by-frame tracking and object recognition for dynamic AI applications.

Building the Next
Dimension of AI
Advanced point cloud and LiDAR annotation for autonomous systems and spatial AI.

Tailored Solutions for Unique Challenges
Tailor-made annotation workflows for unique AI challenges across industries.
NLP & Text Annotation
Get your data labeled in record time.
GenAI & LLM Solutions
Our team is here to assist you anytime.
Retail Data Annotation Services
High accuracy annotation for retail images and videos, supporting shelf monitoring, product recognition, people flow analysis, and store operations intelligence.
Retail Image Annotation Services
High accuracy annotation for retail product images, shelf photos, planogram audits, and merchandising scans.
Retail Video Annotation Services
High accuracy annotation of in store video feeds for shopper tracking, queue detection, planogram monitoring, and retail operations optimization.
Video Annotation
Video annotation services and video labeling for AI teams. DataVLab supports object tracking, action and event labeling, temporal segmentation, frame-by-frame annotation, and sequence QA for scalable model training data.
We provide high-quality data annotation services and improve your AI's performances

Custom service offering
Up to 10x Faster
Accelerate your AI training with high-speed annotation workflows that outperform traditional processes.
AI-Assisted
Seamless integration of manual expertise and automated precision for superior annotation quality.
Advanced QA
Tailor-made quality control protocols to ensure error-free annotations on a per-project basis.
Highly-specialized
Work with industry-trained annotators who bring domain-specific knowledge to every dataset.
Ethical Outsourcing
Fair working conditions and transparent processes to ensure responsible and high-quality data labeling.
Proven Expertise
A track record of success across multiple industries, delivering reliable and effective AI training data.
Scalable Solutions
Tailored workflows designed to scale with your project’s needs, from small datasets to enterprise-level AI models.
Global Team
A worldwide network of skilled annotators and AI specialists dedicated to precision and excellence.
Potential Today
FAQs
Here are some common questions we receive from our clients to assist you.
Retail and in-store analytics AI uses computer vision to understand customer behavior, shelf execution, inventory levels, and operational performance inside physical retail environments. It requires annotated video and image datasets covering product detection and SKU identification on shelves, planogram compliance verification, customer movement tracking and dwell time analysis, queue monitoring, staff activity labeling, and safety event detection. Retail AI annotation must handle the specific challenges of store environments: crowded shelves, variable lighting, wide-angle fisheye cameras, partially occluded products, and continuous video from multiple synchronized cameras.
Retail shelf annotation requires understanding of planogram compliance: does each shelf position contain the correct product in the correct quantity and orientation? Annotators must label product SKUs from overhead or angled camera imagery, identify facing counts, detect out-of-stock positions (empty shelf space that should contain product), flag misplaced items (products in wrong positions), and note promotional compliance. This requires annotators with access to the product taxonomy and planogram data because the same product looks different across lighting conditions, orientations, and packaging variants, and requires category-level knowledge to correctly classify.
Retail video annotation in Europe operates under GDPR constraints because surveillance of customers in retail environments processes personal data. The legal basis for in-store video surveillance must be established (typically legitimate interest with proportionality assessment), data subjects must be informed through visible signage, retention periods must be defined and enforced, and AI training on retail video requires appropriate legal basis and data handling documentation. For retailers building AI on in-store footage, GDPR requires that the annotation workflow itself handles personal data appropriately, including restricting annotator access to customer images to the minimum necessary for the labeling task.
Customer behavior annotation in retail tracks shopper movement trajectories across store camera feeds, dwell time at specific fixture locations, interactions with products (pickup, examination, replacement), queue formation and wait time, and conversion events. For multi-camera retail environments, this requires consistent object tracking across camera perspective transitions, anonymized shopper identity maintained throughout the store visit using appearance features rather than biometric identification, and temporal consistency across extended shopping sessions. DataVLab implements GDPR-compliant customer behavior annotation workflows including anonymization and appropriate legal basis documentation.
E-commerce product annotation enriches the metadata that makes products discoverable and comparable on digital platforms: category classification, attribute tagging (size, color, material, brand, style), visual similarity annotation for recommendation systems, product description validation, and duplicate detection. For fashion and lifestyle e-commerce, attribute taxonomies are particularly complex and require annotators with product category knowledge. For electronics e-commerce, specification extraction and compatibility annotation require technical knowledge. DataVLab provides retail and e-commerce annotation with domain-matched annotators across product categories.
DataVLab provides retail annotation for physical retail (shelf compliance, customer behavior video, queue and traffic analysis, inventory monitoring, loss prevention) and e-commerce (product classification, attribute tagging, visual search similarity, product description validation, duplicate detection). We work with FMCG brands, grocery retailers, fashion retailers, electronics retailers, retail technology providers, and e-commerce platforms. EU-based annotation teams with GDPR-compliant workflows are available for in-store video annotation projects involving customer personal data.
We provide high-quality data annotation services and improve your AI's performances

Blog & Resources
Explore our latest articles and insights on Data Annotation


















