TruongNV-hut/AIcandy_RetinaNet_ObjectDetection_mqeprgnq
RetinaNet for Object Detection
This project helps computer vision engineers and researchers build and train object detection models. You input images or video data, and it outputs a model capable of identifying and precisely locating multiple objects within those visuals by drawing bounding boxes. This is ideal for those working on tasks that require automated visual understanding.
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Use this if you need to develop an accurate and efficient system for automatically finding and outlining specific objects in images or video streams.
Not ideal if you only need to classify an entire image without needing to locate individual objects within it.
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Language
Python
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Last pushed
Sep 18, 2024
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