VEHICLE TYPE DETECTION BASED ON RETINANET WITH ADAPTIVE LEARNING RATE ATTENUATION

Yiliu Xu,∗ Peng He,∗ Hui Wang,∗ Ting Dong,∗ and Pan Shao∗

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