AI Video Data Collection
Training data that teaches AI to see motion
Trusted by AI teams worldwide








10K+
Hours annotated
98.5%
QA accuracy
40+
Action Categories
2K+
Domain expert annotators
48h
Pilot batch turnaround
Use cases
Video datasets for every motion AI application
01
Action & Activity Recognition
Diverse clip-level and frame-level action labels across human activities — sports, workplace tasks, daily living, and safety-critical behaviors — with fine-grained temporal boundaries.
02
Multi-Object Tracking (MOT)
Consistent object identity tracking across frames — vehicles, pedestrians, animals, and products — with occlusion handling, re-identification, and trajectory metadata for tracking model training.
03
Autonomous Driving & ADAS
Dense multi-class video annotation for self-driving systems — vehicle and pedestrian tracks, lane markings, traffic signs, drivable area segmentation, and event detection across weather and lighting conditions.
04
Warehouse & Industrial Robotics
Worker activity monitoring, forklift and conveyor tracking, picking and packing action labels, and safety event detection for warehouse automation and human-robot collaboration AI.
05
Healthcare & Clinical Video
Clinical action recognition, surgical phase detection, patient monitoring activity labels, and rehabilitation exercise classification — under HIPAA-compliant collection and annotation protocols.
06
Security, Surveillance & Anomaly
Crowd counting, person re-identification, loitering detection, fight recognition, and abandoned object labeling for intelligent video surveillance and public safety AI systems.
Annotation types
Every video labeling method, done precisely
Our annotators are trained per task type with strict QA rubrics.
Bounding Box Tracking
Temporal Segmentation
Pose & Keypoint Tracking
Video Segmentation
Event & Anomaly Detection
Video Classification
Multi-Camera & Re-ID
Depth & 3D Video
What we collect & annotate
From raw footage to production-ready video dataset
Video collection
- Controlled action capture campaigns - directing consented participants through scripted activity sequences.
- Environment-specific shoots - warehouses, hospitals, retail stores, outdoor, in-vehicle.
- Multi-camera rig coordination - synchronized multi-view shoots for 3D and re-ID datasets.
- Edge-case & adversarial scenarios - occlusion, low light, partial view, crowd conditions.
- Licensed footage sourcing - sports, CCTV-style, dashcam, drone, and domain-specific video licensing.
- Synthetic video augmentation - rendered video for rare events, dangerous scenarios, long-tail classes.
- Demographic diversity control - balanced age, gender, ethnicity, body type in action datasets.
Annotation & labeling
- Bounding box tracking - frame-level object detection with persistent IDs and interpolation.
- Temporal activity segmentation - start/end boundaries for action clips and event windows.
- Pose & skeleton tracking - keypoint tracking for human and animal pose in video.
- Semantic & instance video segmentation - per-frame mask propagation with consistency checks.
- Event & anomaly timestamping - incident marking with severity, context, and cause metadata.
- Video classification - clip-level and scene-level category labels at scale.
- Attribute labeling - gender, age, clothing, speed, direction, interaction type per track.
How it works
From brief to production-ready video dataset
Define scope
Source & capture
Annotate & QA
Deliver & iterate
Why Synnth
Built for teams who can't afford drift
Temporal consistency QA
Object identities, mask boundaries, and keypoints are validated not just per frame but across the full temporal span of each clip. Drift and ID switches are caught by automated consistency checks before human review.
Frame-accurate
Domain-expert annotators
Healthcare video annotated with clinical knowledge. Automotive data by engineers familiar with driving scenarios. Industrial video by professionals who recognize workplace activities and safety events.
200+ specialists
Controlled capture campaigns
We don’t just label your existing footage. We design and run controlled video collection campaigns — directing participants through specific activity sequences to fill exact data gaps in your training set.
Enterprise-grade security
Fast pilot SLAs
Pilot batches of up to 10 hours of annotated video delivered within 48–72 hours — so you can validate annotation quality and temporal accuracy before committing to full production volume.
48h pilot
Fast pilot SLAs
We build task-specific action ontologies, edge-case handling guides, and inter-annotator calibration sessions — designed around your model’s deployment domain and the specific edge cases that matter to your accuracy metrics.
Zero generic rubrics
Industries
Video annotation expertise across every sector
Autonomous Vehicles
Dashcam and roadside video annotation — vehicle and pedestrian tracking, lane events, traffic sign recognition, and near-miss detection across weather and geography.
Industrial & Warehouse
Worker activity recognition, forklift tracking, conveyor monitoring, picking/packing actions, and safety event detection for automation and workforce analytics.
Healthcare & Clinical
Surgical phase detection, patient activity monitoring, rehabilitation exercise classification, and fall detection under HIPAA-compliant collection protocols.
Sports & Fitness
Athlete pose tracking, action recognition across sports disciplines, form analysis, training drill classification, and team movement pattern labeling.
Retail & Smart Stores
Shopper journey analysis, shelf interaction tracking, queue management events, and product pick-and-place activity labeling for retail AI and loss prevention.
Security & Public Safety
Crowd density estimation, loitering detection, fight recognition, perimeter breach labeling, and multi-camera person re-identification for surveillance AI.
Output formats
Delivered in the format your pipeline expects
FAQ
Common questions about AI video data collection
💡 Can’t find your answer here? Talk to our team — we typically respond within one business day.
What is AI video data collection?
How does frame-accurate video annotation work?
Frame-accurate annotation involves labeling objects, actions, or attributes at the individual frame level throughout a video clip. Annotators begin by placing labels at keyframes, then use interpolation between keyframes for efficiency. Every frame where motion, occlusion, or scene changes occur requires manual inspection and correction. Synnth validates temporal consistency across the full clip — checking that object IDs don’t switch, boundaries remain accurate, and action labels align precisely with their visual evidence in the footage.
What is the difference between action recognition and activity detection data?
Action recognition datasets classify what is happening in a pre-trimmed clip (e.g., “this 10-second clip shows running”). Activity detection datasets require both locating when actions occur within an untrimmed video (temporal start/end boundaries) and classifying what those actions are. Both are supported by Synnth — activity detection is more complex and requires more precise temporal boundary annotation.
What video formats does Synnth accept for annotation?
We accept most common video formats — MP4 (H.264, H.265), MOV, AVI, MKV, WebM, and raw frame sequences (JPG/PNG). For very high-resolution or RAW camera formats, please contact us during scoping to confirm compatibility. Annotations are delivered as JSON, CSV, or XML alongside frame-extracted images where required by your pipeline.
How does Synnth handle occlusion in multi-object tracking?
When a tracked object is occluded (partially or fully hidden by another object or by going out of frame), Synnth annotators flag the frames as occluded in the metadata, maintain the object’s persistent ID so identity continuity is preserved, and re-associate the correct ID when the object reappears. Occlusion handling quality is one of the primary QA dimensions we measure for tracking tasks.
Can Synnth run controlled video capture campaigns?
Yes — this is one of Synnth’s core capabilities. We design and run controlled video shoots with consented participants performing specific activities to your brief. This is especially valuable when you need rare actions, specific environments (warehouses, clinics, vehicles), demographic balance, or adversarial conditions (low light, partial occlusion, crowded scenes) that are hard to source from existing footage.
What is the turnaround time for video annotation projects?
Pilot batches of up to 10 hours of annotated video can typically be delivered within 48–72 hours. Video annotation velocity depends on annotation task complexity — tracking and segmentation take longer per hour of footage than classification. Enterprise projects are scoped with custom SLAs and a dedicated project manager. We share velocity estimates in our initial scoping response.
How is participant consent handled in video collection campaigns?
All participants in Synnth video collection campaigns sign informed consent forms before any footage is recorded. Consent documents specify how the footage will be used (AI model training), whether it will be shared, and the participant’s rights. For sensitive environments like healthcare or with minors, we apply additional consent protocols. All participant data is handled under GDPR-compliant data processing agreements.
What output formats are video annotations delivered in?
We deliver in your preferred format: COCO Video JSON, MOT CSV, AVA JSON, Kinetics-style JSON, CVAT XML, ActivityNet JSON, Waymo TFRecord, nuScenes JSON, YOLO Video TXT, and custom schemas. Output format is agreed during the scoping phase at no additional cost for standard formats.
Get started
Start your video data project today
Tell us your use case, action taxonomy, environment requirements, and volume targets. Our team responds within one business day with a scoping plan and no-obligation quote.
- info@synnth.com
- Mon–Fri, 9am–6pm IST
- Response within 1 business day
- No setup fees
- No setup fees
- NDA available on request
- Free pilot for qualifying projects
