Case Study
Polyline · Lane Detection · Linear Feature Mapping

Polyline — Lane Detection & Linear Feature Mapping

Lane boundary and road marking annotation using polylines — supporting HD map generation and autonomous navigation lane-keeping systems. Ongoing internal pilot on self-hosted CVAT.

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Ongoing — Active Internal Pilot & Training Project

The Challenge

Autonomous vehicles need to know exactly where the lanes are — not just approximately, but with centimeter-level precision. Lane detection models are trained on polyline annotations: connected sequences of points that trace lane boundaries, road markings, curb edges, and other linear features from the vehicle’s perspective. Getting the curvature right, handling intersections, and annotating faded or partially obscured markings is where human precision matters most.

This ongoing internal pilot trains our annotation team on polyline annotation for lane detection and linear feature mapping. Annotators learn to trace lane boundaries through curves, intersections, merges, and degraded road conditions — building the skill set needed for production HD mapping and ADAS annotation projects.

Project Management Keylian Namisi
QA Lead Ibrahim Ouma
Status Ongoing
Platform CVAT v2.58.0 (Self-Hosted)

Annotation Details

Lane & Line Types

FeatureDescription
Lane boundariesLeft/right lane edges, solid and dashed
Road markingsCenter lines, turn arrows, stop lines
Curb edgesRoad-to-sidewalk boundaries
Road edgesPaved surface boundaries
CrosswalksPedestrian crossing boundaries
Merge/split pointsLane merge and diverge locations

Annotation Challenges

ChallengeOur Approach
Faded markingsTrace best estimate, flag confidence
Curved roadsDense point placement on curves
IntersectionsIndividual polyline per lane through intersection
OcclusionInterpolate through vehicles blocking view

Infrastructure

ComponentDetail
PlatformCVAT v2.58.0 (self-hosted)
ServerHetzner dedicated server
DeploymentDocker with SSL
Data SecurityData never leaves our server
PurposeTraining + portfolio building

Export Formats

FormatUse Case
TuSimpleLane detection benchmark
CULaneUrban lane detection
COCO JSONGeneral polyline export
CVAT JSONClient CVAT import

Who This Serves

  • Autonomous vehicles: Lane-keeping, lane change assist, and path planning for L2–L5 self-driving systems
  • HD mapping: High-definition map generation with centimeter-accurate lane geometry for navigation and localization
  • ADAS: Lane departure warning, adaptive cruise control, and highway autopilot features
  • Traffic management: Road marking inventory, intersection design analysis, and traffic flow optimization
  • Infrastructure inspection: Road surface condition assessment and marking degradation monitoring
  • Simulation: Realistic lane geometry for driving simulators and synthetic data generation

Production-ready on demand: Our annotators are trained on polyline annotation for lane boundaries, road markings, curb edges, and complex intersection geometry. If your perception or mapping team needs lane detection training data, we can start a pilot immediately on our self-hosted CVAT infrastructure.

Need Lane Detection Annotation?

Polyline annotation for lane boundaries, road markings, and linear features. Start with a free pilot — same CVAT infrastructure, same QA pipeline, same 98.5% accuracy guarantee.