Project 20 · Robotics / Perception

Obstacle Detection & Avoidance System (Edge AI)

Multi-Modal Vision + Radar Perception on Embedded GPU

Industry
Robotics / Perception
Services
Computer Vision Edge AI Sensor Fusion
TRL
3 → 8
Duration
7 months
Technologies
NVIDIA Jetson stereo vision radar fusion ONNX
Sensor fusion architecture
Figure 1 — Multi-modal fusion architecture (stereo + RGB + radar).
Live obstacle detection scene
Figure 2 — Live detection scene with bounding boxes and ranges.
Detection latency and accuracy
Figure 3 — Latency budget chart + per-class detection rates.
Real-world Obstacle Detection & Avoidance System (Edge AI) installation
Figure 4 — Real-world deployment.

Project background

Outdoor robots face unpredictable obstacles — people, pets, debris, terrain changes. The client needed a perception package that detected these reliably at real-world speeds and lighting conditions.

Challenge

Running modern detection models within the power and thermal budgets of a mobile robot, and fusing multiple sensor modalities so that no single sensor failure produces a blind spot. False negatives had to be vanishingly rare.

Approach & solution

We built a multi-modal stack combining stereo depth, color vision, and radar, fused into a unified obstacle representation. Models were quantized and deployed to embedded GPUs with careful latency budgeting. Edge-case training data was collected specifically for high-risk scenarios.

Results & benefits

The system detected and responded to people, animals, and unexpected obstacles reliably across pilot conditions. Latency stayed low enough for the downstream planner to stop or reroute within safe distances.

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