Skills Artificial Intelligence Real-Time Object Detection with Coral TPU

Real-Time Object Detection with Coral TPU

v20260421
yolo-detection-2026-coral-tpu-win-wsl
This skill provides real-time object detection capabilities by leveraging the Google Coral Edge TPU accelerator. It operates natively within Windows Subsystem for Linux (WSL), allowing high-speed, low-latency inference on live camera frames. By utilizing hardware acceleration, it achieves impressive performance (e.g., ~4ms inference at 320x320), making it ideal for edge computing projects requiring rapid visual analysis and resource efficiency.
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Overview

Coral TPU Object Detection (Windows WSL)

Real-time object detection natively utilizing the Google Coral Edge TPU accelerator on your local hardware via Windows Subsystem for Linux (WSL). Detects 80 COCO classes (person, car, dog, cat, etc.) with ~4ms inference on 320x320 input.

Requirements

  • Google Coral USB Accelerator (USB 3.0 port recommended)
  • WSL2 installed and running on Windows
  • usbipd-win installed on the Windows host

How It Works

┌─────────────────────────────────────────────────────┐
│ Host (Aegis-AI on Windows)                          │
│   frame.jpg → /tmp/aegis_detection/                 │
│   stdin  ──→ ┌──────────────────────────────┐       │
│              │ WSL Container / Environment   │       │
│              │   detect.py                   │       │
│              │   ├─ loads _edgetpu.tflite     │       │
│              │   ├─ reads frame from disk     │       │
│              │   └─ runs inference on TPU    │       │
│   stdout ←── │   → JSONL detections          │       │
│              └──────────────────────────────┘       │
│   USB ──→ usbipd-win bridge to WSL                  │
└─────────────────────────────────────────────────────┘
  1. Aegis writes camera frame JPEG to shared /tmp/aegis_detection/ workspace
  2. Sends frame event via stdin JSONL to the WSL Python instance
  3. detect.py invokes PyCoral and executes natively on the mapped USB Edge TPU inside Linux
  4. Returns detections event via stdout JSONL back to Windows Host

Performance

Input Size Inference On-chip Notes
320x320 ~4ms 100% Fully on TPU, best for real-time
640x640 ~20ms Partial Some layers on CPU (model segmented)

Cooling: The USB Accelerator aluminum case acts as a heatsink. If too hot to touch during continuous inference, it will thermal-throttle. Consider active cooling or clock_speed: standard.

Installation

Windows (WSL)

Run deploy.bat — this will:

  1. Verify usbipd is installed and bind the 18d1:9302 and 1a6e:089a Edge TPU hardware IDs.
  2. Setup a Python virtual environment exclusively within WSL.
  3. Install the Edge TPU libraries and dependencies within the WSL boundary.
  4. Auto-attach the device using usbipd seamlessly during invocation.
Info
Name yolo-detection-2026-coral-tpu-win-wsl
Version v20260421
Size 13.1MB
Updated At 2026-06-10
Language