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公开集识别项目 使用PyTorch进行的开放集识别项目。 如有任何问题,请发送电子邮件 注意:由于我的实验性实现(特别是我的方法),需要重新构造。 要求 对于不同的算法和不同的数据集,要求会有所不同。通常,基本和必不可少的要求是: # pytorch 1.4+, torchvision 0.7.0 + pip3 install torch torchvision # sklearn pip3 install -U scikit-learn # numpy pip3 install numpy # scikit-learn-0.23.2 pip3 install -U sklearn 对于OpenMax: pip3 install libmr 对于绘制MNIST: pip3 install imageio pip3 install tqdm 配套 数据集 CIFAR-100(完成)
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Open-Set-Recognition:开放集识别 (653个子文件)
result.gif 7.68MB
.gitignore 2KB
.gitignore 1KB
thumb.jpg 471KB
ARPL.jpg 293KB
results.jpg 79KB
air300.jpg 42KB
LICENSE 1KB
README.md 3KB
README.md 3KB
README.md 3KB
README.md 2KB
README.md 2KB
AIR300.md 2KB
README.md 277B
README.md 253B
README.md 140B
README.md 140B
README.md 140B
images.pptx 45.46MB
model.py 27KB
cifar100.py 23KB
cifar10.py 23KB
mnist.py 22KB
lvae_train.py 22KB
lvae_train.py 22KB
lvae_train.py 22KB
mnist.py 21KB
imagenet2.py 20KB
imagenet.py 20KB
cifar100.py 20KB
cifar10.py 20KB
imagenet.py 20KB
cifar100.py 20KB
cifar100.py 20KB
cifar100.py 20KB
cifar100_bak.py 20KB
cifar100.py 20KB
cifar100.py 20KB
cifar100.py 20KB
cifar100_bak.py 20KB
cifar100.py 20KB
cifar100.py 19KB
mnist.py 19KB
mnist.py 19KB
mnist.py 19KB
mnist.py 19KB
cifar100.py 19KB
cifar100.py 19KB
mnist.py 19KB
mnist.py 19KB
cifar100.py 19KB
cifar10_5.py 19KB
cifar10.py 19KB
cifar10_3.py 19KB
cifar10_4.py 19KB
mnist.py 19KB
mnist.py 19KB
cifar10_2.py 18KB
imagenet_val.py 18KB
cifar10_0.py 18KB
mnist.py 18KB
cifar100.py 18KB
cifar10.py 18KB
cifar100.py 18KB
mnist.py 18KB
mnist.py 18KB
mnist.py 18KB
mnist.py 18KB
mnist.py 18KB
imagenet_val.py 18KB
mnist.py 18KB
mnist.py 18KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
cifar100.py 17KB
mnist.py 17KB
imagenet_val_default.py 17KB
cifar100.py 17KB
mnist.py 17KB
mnist.py 17KB
mnist.py 17KB
dataloader.py 17KB
mnist.py 17KB
cifar100.py 17KB
cifar10.py 16KB
mnist.py 16KB
cifar100.py 16KB
cifar100.py 16KB
cifar100.py 16KB
cifar10.py 16KB
mnist.py 16KB
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