pyro-vision
Wildfire detector
A Python-based computer vision library for detecting wildfires using deep learning models.
Computer vision library for wildfire detection 🌲 Deep learning models in PyTorch & ONNX for inference on edge devices (e.g. Raspberry Pi)
52 stars
10 watching
24 forks
Language: Python
last commit: 11 months ago
Linked from 1 awesome list
computer-visiondeep-learningimage-classificationkeypoint-detectionobject-detectiononnxpythonpytorchwildfire
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