huma-teknofest/Keras-RetinaNet-for-Teknofest-2019
Using RetinaNet for object detection from drone images in Teknofest istanbul 2019 Artificial Intelligence Competition
This tool helps analyze drone imagery to automatically identify and count vehicles and people. You input raw drone photos, and it outputs the same images with bounding boxes drawn around detected objects (cars, trucks, people). This is designed for professionals involved in aerial surveillance, event monitoring, or asset tracking who need to quickly locate objects in drone footage.
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Use this if you need to automate the detection of vehicles and humans from pre-recorded drone video or image streams.
Not ideal if you need to detect objects other than vehicles or people, or if you require real-time processing directly on a live drone feed.
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Python
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Nov 21, 2022
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