This blog examines video annotation for Generative AI and outlines core challenges, explores modern annotation, highlights practical use cases...
Read MoreVideo Annotation Services for Computer Vision
Digital Divide Data delivers scalable video annotation services to train computer vision models to detect, track, and interpret objects and events across video frames.
Turning Visual Motion into AI Intelligence with Video Annotation Services
Digital Divide Data (DDD) is a global provider of video annotation and computer vision data services. We combine expert human annotation, advanced quality frameworks, and secure infrastructure to help organizations transform raw video data into high-quality training datasets for AI and machine learning applications.
Video Annotation Workflow End-to-End
Fully Managed Video Annotation, From Raw Footage to Model-Ready Data
Align on objectives, classes, events, frame rates, and quality metrics.
Videos are securely ingested, segmented, and optimized for annotation.
Expert annotators label objects, events, and motion across video sequences.
Automated checks, reviewer validation, and temporal consistency audits.
Identification of rare events and balanced representation across scenarios.
Types of Video Annotation We Support
Rectangular boxes are drawn around objects in each frame to identify, locate, and track moving entities across videos.
Objects are annotated in three dimensions to provide spatial depth and orientation for applications like autonomous driving.
We annotate 3D data points in video sequences to support scene understanding, motion analysis, and spatial tracking.
Key landmarks such as buildings, roads, or natural features are labeled, including movement direction and speed when required.
Curves, paths, and linear features are annotated to track trajectories, boundaries, and motion patterns over time.
Complex object boundaries are outlined using polygons for precise tracking and segmentation in dynamic scenes.
Video clips are labeled based on specific actions or events, supporting activity recognition and behavioral modeling.
Annotated datasets enable AI systems to track recurring events and analyze movement patterns and behavioral frequency.
Video Annotation Use Cases
Industries We Support
Autonomous Vehicles
Training video perception models to detect, track, and predict real-world driving scenarios.
Robotics
Enabling robots to interpret dynamic environments and human interactions through video.
Humanoids
Powering human-like perception with motion, gesture, and activity understanding.
AgTech
Monitoring crop growth, equipment movement, and environmental changes via video data.
Geospatial Intelligence
Annotating aerial and satellite video for mapping, monitoring, and situational awareness.
Retail & E-Commerce
Analyzing customer movement, engagement, and in-store behavior patterns.
What Our Clients Say
DDD’s video annotation improved our object tracking accuracy across complex driving scenarios.
Their frame-by-frame annotation consistency was critical for our navigation models.
DDD enabled deep movement insights through precise event and pose annotation.
DDD’s landmark and motion annotation delivered exceptional spatial intelligence.
Why Choose DDD?
Our trained annotators ensure temporal accuracy, contextual understanding, and precise handling of complex and edge-case video scenarios.
We scale seamlessly from short clips to massive video archives, supporting evolving AI and production requirements.
Comprehensive support for 2D video, 3D cuboids, point cloud data, and multisensor-fused video datasets.
Optimized pipelines and automation reduce turnaround times for large, video-intensive datasets.
DDD’s Commitment to Security & Compliance
Your computer vision datasets are protected at every stage through globally recognized security standards and secure operational infrastructure.

SOC 2 Type 2

ISO 27001
Holistic information security management with continuous audits

GDPR & HIPAA Compliance
Responsible handling of personal and sensitive data

TISAX Alignment
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Frequently Asked Questions
Video annotation services involve labeling and tagging objects, events, and activities across video frames to train computer vision and machine learning models to understand motion, behavior, and temporal context.
Video annotation requires labeling objects consistently across multiple frames, enabling object tracking, motion analysis, and event detection, making it more complex than single-image annotation.
DDD supports frame-by-frame annotation, video classification, event-based timestamp labeling, live video stream monitoring, video moderation, and event tracking.
We use 2D bounding boxes, 3D cuboids, polygons, point cloud annotation, landmarks, lines and splines, and event-based labels depending on the use case.
Yes. Our scalable video annotation services support short clips, long-duration videos, and high-frame-rate footage across large datasets.
Yes. We apply bias-aware sampling, balanced labeling, and diverse data coverage to improve fairness and real-world reliability.