Hard Aware Deeply Cascaed Embedding Save

source code for the paper "Hard-Aware-Deeply-Cascaed-Embedding"

Project README

Hard-Aware-Deeply-Cascaed-Embedding

Good NEWS ! We have released the all the codes. Please refer to the project Hard-Aware-Deeply-Cascaded-Embedding_release

Yuan Y, Yang K, Zhang C. Hard-Aware Deeply Cascaded Embedding[J]. arXiv preprint arXiv:1611.05720, 2016.

This is the raw code for our work submitted to cvpr-2017. we will release the complete version in the future.(include the testing code). Here you can find all the training details in our implementation.

training data sample method :

cars-196 : random sample 10 classes (each with 10 images) as a mini-batch

cub-bird : random sample 10 classes (each with 10 images) as a mini-batch

stanford-online-products : random sample 2 big classes, then sample 10 classes in each big class. (each class only have small number of images)

deep-fashion : randome sample 2 big classes, then sample 10 classes in each big class.

we will release the sample method code as soon as possile.

Open Source Agenda is not affiliated with "Hard Aware Deeply Cascaed Embedding" Project. README Source: PkuRainBow/Hard-Aware-Deeply-Cascaed-Embedding
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