import sys sys.path.append("/mnt/chulutao/PaddleRS") import paddlers as pdrs from paddlers import transforms as T # 下载和解压多光谱地块分类数据集 dataset = 'https://paddleseg.bj.bcebos.com/dataset/remote_sensing_seg.zip' pdrs.utils.download_and_decompress(dataset, path='./data') # 定义训练和验证时的transforms # API说明:https://github.com/PaddlePaddle/paddlers/blob/develop/docs/apis/transforms/transforms.md channel = 10 train_transforms = T.Compose([ T.Resize(target_size=512), T.RandomHorizontalFlip(), T.Normalize( mean=[0.5] * 10, std=[0.5] * 10), ]) eval_transforms = T.Compose([ T.Resize(target_size=512), T.Normalize( mean=[0.5] * 10, std=[0.5] * 10), ]) # 定义训练和验证所用的数据集 # API说明:https://github.com/PaddlePaddle/paddlers/blob/develop/docs/apis/datasets.md train_dataset = pdrs.datasets.SegDataset( data_dir='./data/remote_sensing_seg', file_list='./data/remote_sensing_seg/train.txt', label_list='./data/remote_sensing_seg/labels.txt', transforms=train_transforms, num_workers=0, shuffle=True) eval_dataset = pdrs.datasets.SegDataset( data_dir='./data/remote_sensing_seg', file_list='./data/remote_sensing_seg/val.txt', label_list='./data/remote_sensing_seg/labels.txt', transforms=eval_transforms, num_workers=0, shuffle=False) # 初始化模型,并进行训练 # 可使用VisualDL查看训练指标,参考https://github.com/PaddlePaddle/paddlers/blob/develop/docs/visualdl.md num_classes = len(train_dataset.labels) model = pdrs.tasks.DeepLabV3P(input_channel=channel, num_classes=num_classes, backbone='ResNet50_vd') # API说明:https://github.com/PaddlePaddle/paddlers/blob/develop/docs/apis/models/semantic_segmentation.md # 各参数介绍与调整说明:https://github.com/PaddlePaddle/paddlers/blob/develop/docs/parameters.md model.train( num_epochs=10, train_dataset=train_dataset, train_batch_size=4, eval_dataset=eval_dataset, learning_rate=0.01, save_dir='output/deeplabv3p_r50vd')