Table of Contents
Fashion-MNIST
is a dataset of Zalando's article imagesโconsisting of a training set of 60,000 examples and a test set of 10,000 examples. Each example is a 28x28 grayscale image, associated with a label from 10 classes. We intend Fashion-MNIST
to serve as a direct drop-in replacement for the original MNIST dataset for benchmarking machine learning algorithms. It shares the same image size and structure of training and testing splits.
Here's an example how the data looks (each class takes three-rows):
The original MNIST dataset contains a lot of handwritten digits. Members of the AI/ML/Data Science community love this dataset and use it as a benchmark to validate their algorithms. In fact, MNIST is often the first dataset researchers try. "If it doesn't work on MNIST, it won't work at all", they said. "Well, if it does work on MNIST, it may still fail on others."
Seriously, we are talking about replacing MNIST. Here are some good reasons:
- MNIST is too easy. Convolutional nets can achieve 99.7% on MNIST. Classic machine learning algorithms can also achieve 97% easily. Check out our side-by-side benchmark for Fashion-MNIST vs. MNIST, and read "Most pairs of MNIST digits can be distinguished pretty well by just one pixel."
- MNIST is overused. In this April 2017 Twitter thread, Google Brain research scientist and deep learning expert Ian Goodfellow calls for people to move away from MNIST.
- MNIST can not represent modern CV tasks, as noted in this April 2017 Twitter thread, deep learning expert/Keras author Franรงois Chollet.
Many ML libraries already include Fashion-MNIST data/API, give it a try!
You can use direct links to download the dataset. The data is stored in the same format as the original MNIST data.
Name | Content | Examples | Size | Link | MD5 Checksum |
---|---|---|---|---|---|
train-images-idx3-ubyte.gz |
training set images | 60,000 | 26 MBytes | Download | 8d4fb7e6c68d591d4c3dfef9ec88bf0d |
train-labels-idx1-ubyte.gz |
training set labels | 60,000 | 29 KBytes | Download | 25c81989df183df01b3e8a0aad5dffbe |
t10k-images-idx3-ubyte.gz |
test set images | 10,000 | 4.3 MBytes | Download | bef4ecab320f06d8554ea6380940ec79 |
t10k-labels-idx1-ubyte.gz |
test set labels | 10,000 | 5.1 KBytes | Download | bb300cfdad3c16e7a12a480ee83cd310 |
Alternatively, you can clone this GitHub repository; the dataset appears under data/fashion
. This repo also contains some scripts for benchmark and visualization.
git clone [email protected]:zalandoresearch/fashion-mnist.git
Each training and test example is assigned to one of the following labels:
Label | Description |
---|---|
0 | T-shirt/top |
1 | Trouser |
2 | Pullover |
3 | Dress |
4 | Coat |
5 | Sandal |
6 | Shirt |
7 | Sneaker |
8 | Bag |
9 | Ankle boot |
Loading data with Python (requires NumPy)
Use utils/mnist_reader
in this repo:
import mnist_reader
X_train, y_train = mnist_reader.load_mnist('data/fashion', kind='train')
X_test, y_test = mnist_reader.load_mnist('data/fashion', kind='t10k')
Make sure you have downloaded the data and placed it in data/fashion
. Otherwise, Tensorflow will download and use the original MNIST.
from tensorflow.examples.tutorials.mnist import input_data
data = input_data.read_data_sets('data/fashion')
data.train.next_batch(BATCH_SIZE)
Note, Tensorflow (master ver.) supports passing in a source url to the read_data_sets
. You may use:
data = input_data.read_data_sets('data/fashion', source_url='http://fashion-mnist.s3-website.eu-central-1.amazonaws.com/')
To date, the following libraries have included Fashion-MNIST
as a built-in dataset. Therefore, you don't need to download Fashion-MNIST
by yourself. Just follow their API and you are ready to go.
- Apache MXNet Gluon
- deeplearn.js
- Kaggle
- Pytorch
- Keras
- Edward
- Tensorflow
- Torch
- JuliaML
- Chainer (latest)
- Brine
You are welcome to make pull requests to other open-source machine learning packages, improving their support to Fashion-MNIST
dataset.
As one of the Machine Learning community's most popular datasets, MNIST has inspired people to implement loaders in many different languages. You can use these loaders with the Fashion-MNIST
dataset as well. (Note: may require decompressing first.) To date, we haven't yet tested all of these loaders with Fashion-MNIST.
We built an automatic benchmarking system based on scikit-learn
that covers 129 classifiers (but no deep learning) with different parameters. Find the results here.
You can reproduce the results by running benchmark/runner.py
. We recommend building and deploying this Dockerfile.
You are welcome to submit your benchmark; simply create a new issue and we'll list your results here. Before doing that, please make sure it does not already appear in this list. Visit our contributor guidelines for additional details.
The table below collects the submitted benchmarks. Note that we haven't yet tested these results. You are welcome to validate the results using the code provided by the submitter. Test accuracy may differ due to the number of epoch, batch size, etc. To correct this table, please create a new issue.
Classifier | Preprocessing | Fashion test accuracy | MNIST test accuracy | Submitter | Code |
---|---|---|---|---|---|
2 Conv Layers with max pooling (Keras) | None | 0.876 | - | Kashif Rasul | ๐ |
2 Conv Layers with max pooling (Tensorflow) >300 epochs | None | 0.916 | - | Tensorflow's doc | ๐ |
2 Conv Layers with max pooling and ELU activation (PyTorch) | None | 0.903 | - | @AbhirajHinge | ๐ |
2 Conv Layers net | Normalization, random horizontal flip, random vertical flip, random translation, random rotation. | 0.919 | 0.971 | Kyriakos Efthymiadis | ๐ |
2 Conv Layers net <100K parameters | None | 0.925 | 0.992 | @hardmaru | ๐ |
2 Conv Layers 113K parameters | Normalization | 0.922 | 0.993 | Abel G. | ๐ |
2 Conv Layers with 3 FC 1.8M parameters | Normalization | 0.932 | 0.994 | @Xfan1025 | ๐ |
3 Conv Layers and 2 FC | None | 0.907 | - | @Cenk Bircanoฤlu | ๐ |
3 Conv Layers+pooling+BN | None | 0.903 | 0.994 | @meghanabhange | ๐ |
3 Conv+pooling and 2 FC+dropout | None | 0.926 | - | @Umberto Griffo | ๐ |
GRU+SVM | None | 0.888 | 0.965 | @AFAgarap | ๐ |
GRU+SVM with dropout | None | 0.897 | 0.988 | @AFAgarap | ๐ |
WRN40-4 8.9M params | standard preprocessing (mean/std subtraction/division) and augmentation (random crops/horizontal flips) | 0.967 | - | @ajbrock | ๐ ๐ |
DenseNet-BC 768K params | standard preprocessing (mean/std subtraction/division) and augmentation (random crops/horizontal flips) | 0.954 | - | @ajbrock | ๐ ๐ |
MobileNet | augmentation (horizontal flips) | 0.950 | - | @่ๅๆ | ๐ |
ResNet18 | Normalization, random horizontal flip, random vertical flip, random translation, random rotation. | 0.949 | 0.979 | Kyriakos Efthymiadis | ๐ |
GoogleNet with cross-entropy loss | None | 0.937 | - | @Cenk Bircanoฤlu | ๐ |
AlexNet with Triplet loss | None | 0.899 | - | @Cenk Bircanoฤlu | ๐ |
SqueezeNet with cyclical learning rate 200 epochs | None | 0.900 | - | @snakers4 | ๐ |
Dual path network with wide resnet 28-10 | standard preprocessing (mean/std subtraction/division) and augmentation (random crops/horizontal flips) | 0.957 | - | @Queequeg | ๐ |
MLP 256-128-64 | None | 0.900 | - | @lianghong | ๐ |
VGG16 26M parameters | None | 0.935 | - | @QuantumLiu | ๐ ๐ |
WRN-28-10 | standard preprocessing (mean/std subtraction/division) and augmentation (random crops/horizontal flips) | 0.959 | - | @zhunzhong07 | ๐ |
WRN-28-10 + Random Erasing | standard preprocessing (mean/std subtraction/division) and augmentation (random crops/horizontal flips) | 0.963 | - | @zhunzhong07 | ๐ |
Human Performance | Crowd-sourced evaluation of human (with no fashion expertise) performance. 1000 randomly sampled test images, 3 labels per image, majority labelling. | 0.835 | - | Leo | - |
Capsule Network 8M parameters | Normalization and shift at most 2 pixel and horizontal flip | 0.936 | - | @XifengGuo | ๐ |
HOG+SVM | HOG | 0.926 | - | @subalde | ๐ |
XgBoost | scaling the pixel values to mean=0.0 and var=1.0 | 0.898 | 0.958 | @anktplwl91 | ๐ |
- Tensorflow implementation of various GANs and VAEs. (Recommend to read! Note how various GANs generate different results on Fashion-MNIST, which can not be easily observed on the original MNIST.)
- Make a ghost wardrobe using DCGAN
- fashion-mnist็gan็ฉๅ ท
- CGAN output after 5000 steps
- live demo of Generative Adversarial Network model with deeplearn.js
- GAN Playground - Explore Generative Adversarial Nets in your Browser
Machine Learning Meets Fashion by Yufeng G @ Google Cloud
Introduction to Kaggle Kernels by Yufeng G @ Google Cloud
ๅจๆๅญฆๆทฑๅบฆๅญฆไน by Mu Li @ Amazon AI
Apache MXNet์ผ๋ก ๋ฐฐ์๋ณด๋ ๋ฅ๋ฌ๋(Deep Learning) - ๊น๋ฌดํ (AWS ์๋ฃจ์ ์ฆ์ํคํ ํธ)
Thanks for your interest in contributing! There are many ways to get involved; start with our contributor guidelines and then check these open issues for specific tasks.
To discuss the dataset, please use .
If you use Fashion-MNIST in a scientific publication, we would appreciate references to the following paper:
Fashion-MNIST: a Novel Image Dataset for Benchmarking Machine Learning Algorithms. Han Xiao, Kashif Rasul, Roland Vollgraf. arXiv:1708.07747
Biblatex entry:
@online{xiao2017/online,
author = {Han Xiao and Kashif Rasul and Roland Vollgraf},
title = {Fashion-MNIST: a Novel Image Dataset for Benchmarking Machine Learning Algorithms},
date = {2017-08-28},
year = {2017},
eprintclass = {cs.LG},
eprinttype = {arXiv},
eprint = {cs.LG/1708.07747},
}
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