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#?train?efficientdet-d2?on?a?custom?dataset?with?pretrained?weights??#?with?batchsize?8?and?learning?rate?1e-5?for?10?epoches??python?train.py?-c?2?--batch_size?8?--lr?1e-5?--num_epochs?10????--load_weights?/path/to/your/weights/efficientdet-d2.pth??#?with?a?coco-pretrained,?you?can?even?freeze?the?backbone?and?train?heads?only??#?to?speed?up?training?and?help?convergence.??python?train.py?-c?2?--batch_size?8?--lr?1e-5?--num_epochs?10????--load_weights?/path/to/your/weights/efficientdet-d2.pth????--head_only?True?
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  • Ô­ÎÄÁ´½Ó£ºhttp://news.51cto.com/art/202004/614407.htm
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