The trained ResNet models achieve better error rates than the original ResNet-v1 models.
Imagenet 1000 class dataset with 1.2 million images.
single center crop (224x224) validation error rate(%)
Network | Top-1 error | Top-5 error | Traind Model |
---|---|---|---|
ResNet-18 | 30.48 | 10.92 | data.dmlc.ml |
ResNet-34 | 27.20 | 8.86 | data.dmlc.ml |
ResNet-50 | 24.39 | 7.24 | data.dmlc.ml |
ResNet-101 | 22.68 | 6.58 | data.dmlc.ml |
ResNet-152 | 22.25 | 6.42 | data.dmlc.ml |
ResNet-200 | 22.14 | 6.16 | data.dmlc.ml |
Full imagenet dataset: fall11_whole.tar
from
http://www.image-net.org/download-images.
We removed classes with less than 500 images. The filtered dataset contains 11221 classes and 12.4 millions images. We randomly pick 50 images from each class as the validation set. The split is available at http://data.dmlc.ml/mxnet/models/imagenet-11k/
Network | Top-1 error | Top-5 error | Traind Model |
---|---|---|---|
ResNet-200 | 58.4 | 28.8 |
Network | top-1 |
---|---|
ResNet-164 | 4.68 |
The following curve is ResNet-v2 trainined on imagenet-1k, all the training detail you can found here, which include gpu information, lr schedular, batch-size etc, and you can also see the training speed with the corresponding logs.
you can get the curve by run:
cd log && python plot_curve.py --logs=resnet-18.log,resnet-34.log,resnet-50.log,resnet-101.log,resnet-152.log,resnet-200.log
first you should prepare the train.lst
and val.lst
, you can generate this list files by yourself(please ref.make-the-image-list, and do not forget to shuffle the list files!), or just download the provided version from here.
then you can create the *.rec
file, i recommend use this cmd parameters:
$im2rec_path train.lst train/ data/imagenet/train_480_q90.rec resize=480 quality=90
set resize=480
and quality=90
(quality=100
will be best i think:)) here may use more disk memory(about ~103G), but this is very useful with scale augmentation during training[1][2], and can help reproducing a good result.
because you are training imagenet , so we should set data-type = imagenet
, then the training cmd is like this(here i use 6 gpus for training):
python -u train_resnet.py --data-dir data/imagenet \
--data-type imagenet --depth 50 --batch-size 256 --gpus=0,1,2,3,4,5
change depth to different number to support different model, currently support ResNet-18, ResNet-34, ResNet-50, ResNet-101, ResNet-152, ResNet-200.
same as above, first you should use im2rec
to create the .rec file, then training with cmd like this:
python -u train_resnet.py --data-dir data/cifar10 --data-type cifar10 \
--depth 164 --batch-size 128 --num-examples 50000 --gpus=0,1
change depth
when training different model, only support(depth-2)%9==0
, such as RestNet-110, ResNet-164, ResNet-1001...
When training large dataset(like imagenet), it's better for us to change learning rate manually, or the training is killed by some other reasons, so retrain is very important. the code here support retrain, suppose you want to retrain your resnet-50 model from epoch 70 and want to change lr=0.0005, wd=0.001, batch-size=256 using 8gpu, then you can try this cmd:
python -u train_resnet.py --data-dir data/imagenet --data-type imagenet --depth 50 --batch-size 256 \
--gpus=0,1,2,3,4,5,6,7 --model-load-epoch=70 --lr 0.0005 --wd 0.001 --retrain
train = mx.io.ImageRecordIter(
# path_imgrec = os.path.join(args.data_dir, "train_480_q90.rec"),
path_imgrec = os.path.join(args.data_dir, "train_256_q90.rec"),
label_width = 1,
data_name = 'data',
label_name = 'softmax_label',
data_shape = (3, 32, 32) if args.data_type=="cifar10" else (3, 224, 224),
batch_size = args.batch_size,
pad = 4 if args.data_type == "cifar10" else 0,
fill_value = 127, # only used when pad is valid
rand_crop = True,
# max_random_scale = 1.0 if args.data_type == "cifar10" else 1.0, # 480
# min_random_scale = 1.0 if args.data_type == "cifar10" else 0.533, # 256.0/480.0
# max_aspect_ratio = 0 if args.data_type == "cifar10" else 0.25,
# random_h = 0 if args.data_type == "cifar10" else 36, # 0.4*90
# random_s = 0 if args.data_type == "cifar10" else 50, # 0.4*127
# random_l = 0 if args.data_type == "cifar10" else 50, # 0.4*127
rand_mirror = True,
shuffle = True,
num_parts = kv.num_workers,
part_index = kv.rank)
but you should prepare one train_256_q90.rec
using im2rec
like:
$im2rec_path train.lst train/ data/imagenet/train_256_q90.rec resize=256 quality=90
cancel this scale/color/aspect augmentation can be done easily by using --aug-level=1
in your cmd.
lr
(such as 60), so you may decide the epoch number by observe the val-acc curve, and set lr with retrain
.you can training ResNet-200 or even ResNet-1000 on imaget with only one gpu! for example, we can train ResNet-200 with batch-size=128 on one gpu(=12G), or if your gpu memory is less than 12G, you should decrease the batch-size by a little. here is the way of how to using 'dark knowledge' of mxnet:
--memonger
to your training cmd, i.e. python train_resnet.py --memonger ...
. when turn on memonger, the trainning speed will be about 25% slower, but we can training more depth network, have fun!
Does ResNet-v2 always achieve better result than ResNet-v1 on imagnet?
The answer is NO, ResNet-v2 has no advantage or even has disadvantage than ResNet-v1 when depth<152
, we can get the following result from paper[2].(why?)
ImageNet: single center crop validation error rate(%)
Network | crop-size | top-1 | top-5 |
---|---|---|---|
ResNet-101-v1 | 224x224 | 23.6 | 7.1 |
ResNet-101-v2 | 224x224 | 24.6 | 7.5 |
ResNet-152-v1 | 320x320 | 21.3 | 5.5 |
ResNet-152-v2 | 320x320 | 21.1 | 5.5 |
we can see that:
depth=101
, ResNet-v2 is 1% worse than ResNet-v1 on top-1 and 0.4% worse on top-5.depth=152
, ResNet-v2 is only 0.2% better than ResNet-v1 on top-1 and owns the same performance on top-5 even when crop-size=320x320.we can use the pre-trained model to classify one input image, the step is easy:
cd predict
and run python -u predict.py --img test.jpg --prefix resnet-50 --gpu 0
, this means you want to recgnition test.jpg using model resnet-50-0000.params and gpu 0, then it will output the classification result.[1] Kaiming He, et al. "Deep Residual Learning for Image Recognition." arXiv arXiv:1512.03385 (2015).
[2] Kaiming He, et al. "Identity Mappings in Deep Residual Networks" arXiv:1603.05027 (2016).
[3] caffe official training code and model, https://github.com/KaimingHe/deep-residual-networks
[4] torch training code and model provided by facebook, https://github.com/facebook/fb.resnet.torch
[5] MXNet resnet-v1 cifar10 examples,https://github.com/dmlc/mxnet/blob/master/example/image-classification/train_cifar10_resnet.py