import os # 选择使用0号卡 os.environ['CUDA_VISIBLE_DEVICES'] = '0' from paddlex.det import transforms import paddlex as pdx # 下载和解压小度熊分拣数据集 xiaoduxiong_dataset = 'https://bj.bcebos.com/paddlex/datasets/xiaoduxiong_ins_det.tar.gz' pdx.utils.download_and_decompress(xiaoduxiong_dataset, path='./') # 定义训练和验证时的transforms train_transforms = transforms.Compose([ transforms.RandomHorizontalFlip(), transforms.Normalize(), transforms.ResizeByShort(short_size=800, max_size=1333), transforms.Padding(coarsest_stride=32) ]) eval_transforms = transforms.Compose([ transforms.Normalize(), transforms.ResizeByShort(short_size=800, max_size=1333), transforms.Padding(coarsest_stride=32) ]) # 定义训练和验证所用的数据集 train_dataset = pdx.datasets.CocoDetection( data_dir='xiaoduxiong_ins_det/JPEGImages', ann_file='xiaoduxiong_ins_det/train.json', transforms=train_transforms, shuffle=True) eval_dataset = pdx.datasets.CocoDetection( data_dir='xiaoduxiong_ins_det/JPEGImages', ann_file='xiaoduxiong_ins_det/val.json', transforms=eval_transforms) # 初始化模型,并进行训练 # 可使用VisualDL查看训练指标 # VisualDL启动方式: visualdl --logdir output/mask_rcnn_r50_fpn/vdl_log --port 8001 # 浏览器打开 https://0.0.0.0:8001即可 # 其中0.0.0.0为本机访问,如为远程服务, 改成相应机器IP # num_classes 需要设置为包含背景类的类别数,即: 目标类别数量 + 1 num_classes = len(train_dataset.labels) + 1 model = pdx.det.MaskRCNN(num_classes=num_classes, backbone='ResNet18') model.train( num_epochs=12, train_dataset=train_dataset, train_batch_size=1, eval_dataset=eval_dataset, learning_rate=0.00125, warmup_steps=10, lr_decay_epochs=[8, 11], save_dir='output/mask_rcnn_r18_fpn', use_vdl=True)