/tencent-ml-images

Largest multi-label image database; ResNet-101 model; 80.73% top-1 acc on ImageNet

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Tencent ML-Images

This repository introduces the open-source project dubbed Tencent ML-Images, which publishes

  • ML-Images: the largest open-source multi-label image database, including 17,609,752 training and 88,739 validation image URLs, which are annotated with up to 11,166 categories
  • Resnet-101 model: it is pre-trained on ML-Images, and achieves the top-1 accuracy 80.73% on ImageNet via transfer learning

Updates

  • [2019/12/26] Our manuscript of this open-source project has been accepted to IEEE Access (Journal, ArXiv). It presents more details of the database, the loss function, the training algorithm, and more experimental results.
  • [2018/12/19] We simplify the procedure of downloading images. Please see Download Images.

Contents

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The image URLs of ML-Images are collected from ImageNet and Open Images. Specifically,

  • Part 1: From the whole database of ImageNet, we adopt 10,706,941 training and 50,000 validation image URLs, covering 10,032 categories.
  • Part 2: From Open Images, we adopt 6,902,811 training and 38,739 validation image URLs, covering 1,134 unique categories (note that some other categories are merged with their synonymous categories from ImageNet).

Finally, ML-Images includes 17,609,752 training and 88,739 validation image URLs, covering 11,166 categories.

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Due to the copyright, we cannot provide the original images directly. However, one can obtain all images of our database using the following files:

We find that massive urls provided by ImageNet have expired (please check the file List of all image URLs of Fall 2011 Release at http://image-net.org/download-imageurls). Thus, here we provide the original image IDs of ImageNet used in our database. One can obtain the training/validation images of our database through the following steps:

  • Download the whole database of ImageNet
  • Extract the training/validation images using the image IDs in train_image_id_from_imagenet.txt and val_image_id_from_imagenet.txt

The format of train_image_id_from_imagenet.txt is as follows:

...
n04310904/n04310904_8388.JPEG   2367:1  2172:1  1831:1  1054:1  1041:1  865:1   2:1
n11753700/n11753700_1897.JPEG   5725:1  5619:1  5191:1  5181:1  5173:1  5170:1  1042:1  865:1   2:1
...

As shown above, one image corresponds to one row. The first term is the original image ID of ImageNet. The followed terms separated by space are the annotations. For example, "2367:1" indicates class 2367 and its confidence 1. Note that the class index starts from 0, and you can find the class name from the file data/dictionary_and_semantic_hierarchy.txt.

NOTE: We find that there are some repeated URLs in List of all image URLs of Fall 2011 Release of ImageNet, i.e., the image corresponding to one URL may be stored in multiple sub-folders with different image IDs. We manually check a few repeated images, and find the reason is that one image annotated with a child class may also be annotated with its parent class, then it is saved to two sub-folders with different image IDs. To the best of our knowledge, this point has never been claimed in ImageNet or any other place. If one want to use ImageNet, this point should be noticed. Due to that, there are also a few repeated images in our database, but our training is not significantly influenced. In future, we will update the database by removing the repeated images.

The images from Open Images can be downloaded using URLs. The format of train_urls_from_openimages.txt is as follows:

...
https://c4.staticflickr.com/8/7239/6997334729_e5fb3938b1_o.jpg  3:1  5193:0.9  5851:0.9 9413:1 9416:1
https://c2.staticflickr.com/4/3035/3033882900_a9a4263c55_o.jpg  1053:0.8  1193:0.8  1379:0.8
...

As shown above, one image corresponds to one row. The first term is the image URL. The followed terms separated by space are the annotations. For example, "5193:0.9" indicates class 5193 and its confidence 0.9.

Download Images using URLs

We also provide the code to download images using URLs. As train_urls_from_openimages.txt is very large, here we provide a tiny file train_urls_tiny.txt to demonstrate the downloading procedure.

cd data
./download_urls_multithreading.sh

A sub-folder data/images will be generated to save the downloaded jpeg images, as well as a file train_im_list_tiny.txt to save the image list and the corresponding annotations.

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We build the semantic hiearchy of 11,166 categories, according to WordNet. The direct parent categories of each class can be found from the file data/dictionary_and_semantic_hierarchy.txt. The whole semantic hierarchy includes 4 independent trees, of which the root nodes are thing, matter, object, physical object and atmospheric phenomenon, respectively. The length of the longest semantic path from root to leaf nodes is 16, and the average length is 7.47.

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Since the image URLs of ML-Images are collected from ImageNet and Open Images, the annotations of ML-Images are constructed based on the original annotations from ImageNet and Open Images. Note that the original annotations from Open Images are licensed by Google Inc. under CC BY-4.0. Specifically, we conduct the following steps to construct the new annotations of ML-Images.

  • For the 6,902,811 training URLs from Open Images, we remove the annotated tags that are out of the remained 1,134 categories.
  • According to the constructed semantic hierarchy of 11,166 categories, we augment the annotations of all URLs of ML-Images following the cateria that if one URL is annotated with category i, then all ancestor categories will also be annotated to this URL.
  • We train a ResNet-101 model based on the 6,902,811 training URLs from Open Images, with 1,134 outputs. Using this ResNet-101 model, we predict the tags from 1,134 categories for the 10,756,941 single-annotated image URLs from ImageNet. Consequently, we obtain a normalized co-occurrence matrix between 10,032 categories from ImageNet and 1,134 categories from Open Images. We can determine the strongly co-occurrenced pairs of categories. For example, category i and j are strongly co-occurrenced; then, if one image is annotated with category i, then category j should also be annotated.

The annotations of all URLs in ML-Images are stored in train_urls.txt and val_urls.txt.

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The main statistics of ML-Images are summarized in ML-Images.

# Train images # Validation images # Classes # Trainable Classes # Avg tags per image # Avg images per class
17,609,752 88,739 11,166 10,505 8.72 13,843

Note: Trainable class indicates the class that has over 100 train images.


The number of images per class and the histogram of the number of annotations in training set are shown in the following figures.

GitHub GitHub

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Here we generate the tfrecords using the multithreading module. One should firstly split the file train_im_list_tiny.txt into multiple smaller files, and save them into the sub-folder data/image_lists/.

cd data
./tfrecord.sh

Multiple tfrecords (named like x.tfrecords) will saved to data/tfrecords/.

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Before training, one should move the train and validation tfrecords to data/ml-images/train and data/ml-images/val, respectively. Then,

./example/train.sh

Note: Here we only provide the training code in the single node single GPU framework, while our actual training on ML-Images is based on an internal distributed training framework (not released yet). One could modify the training code to the distributed framework following distributed tensorFlow.

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One should firstly download the ImageNet (ILSVRC2012) database, then prepare the tfrecord file using tfrecord.sh. Then, you can finetune the ResNet-101 model on ImageNet as follows, with the checkpoint pre-trained on ML-Images.

./example/finetune.sh

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  • ckpt-resnet101-mlimages (link1, link2): pretrained on ML-Images
  • ckpt-resnet101-mlimages-imagenet (link1, link2): pretrained on ML-Images and finetuned on ImageNet (ILSVRC2012)

Please download above two checkpoints and move them into the folder checkpoints/, if you want to extract features using them.

Here we provide a demo for single-label image-classification, using the checkpoint ckpt-resnet101-mlimages-imagenet downloaded above.

./example/image_classification.sh

The prediction will be saved to label_pred.txt. If one wants to recognize other images, data/im_list_for_classification.txt should be modified to include the path of these images.

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./example/extract_feature.sh

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The retults of different ResNet-101 checkpoints on the validation set of ImageNet (ILSVRC2012) are summarized in the following table.

Checkpoints Train and finetune setting Top-1 acc
on Val 224
Top-5 acc
on Val 224
Top-1 acc
on Val 299
Top-5 acc
on Val 299
MSRA ResNet-101 train on ImageNet 76.4 92.9 -- --
Google ResNet-101 ckpt1 train on ImageNet, 299 x 299 -- -- 77.5 93.9
Our ResNet-101 ckpt1 train on ImageNet 77.8 93.9 79.0 94.5
Google ResNet-101 ckpt2 Pretrain on JFT-300M, finetune on ImageNet, 299 x 299 -- -- 79.2 94.7
Our ResNet-101 ckpt2 Pretrain on ML-Images, finetune on ImageNet 78.8 94.5 79.5 94.9
Our ResNet-101 ckpt3 Pretrain on ML-Images, finetune on ImageNet 224 to 299 78.3 94.2 80.73 95.5
Our ResNet-101 ckpt4 Pretrain on ML-Images, finetune on ImageNet 299 x 299 75.8 92.7 79.6 94.6

Note:

  • if not specified, the image size in training/finetuning is 224 x 224.
  • finetune on ImageNet from 224 to 299 means that the image size in early epochs of finetuning is 224 x 224, then 299 x 299 in late epochs.
  • Top-1 acc on Val 224 indicates the top-1 accuracy on 224 x 224 validation images.

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The annotations of images are licensed by Tencent under CC BY 4.0 license. The contents of this repository, including the codes, documents and checkpoints, are released under an BSD 3-Clause license. Please refer to LICENSE for more details.

If there is any concern about the copyright of any image used in this project, please email us.

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If any content of this project is utilized in your work (such as data, checkpoint, code, or the proposed loss or training algorithm), please cite the following manuscript.

@article{tencent-ml-images-2019,
  title={Tencent ML-Images: A Large-Scale Multi-Label Image Database for Visual Representation Learning},
  author={Wu, Baoyuan and Chen, Weidong and Fan, Yanbo and Zhang, Yong and Hou, Jinlong and Liu, Jie and Zhang, Tong},
  journal={IEEE Access},
  volume={7},
  year={2019}
}