bmartacho / UniPose

We propose UniPose, a unified framework for human pose estimation, based on our “Waterfall” Atrous Spatial Pooling architecture, that achieves state-of-art-results on several pose estimation metrics. Current pose estimation methods utilizing standard CNN architectures heavily rely on statistical postprocessing or predefined anchor poses for joint localization. UniPose incorporates contextual seg- mentation and joint localization to estimate the human pose in a single stage, with high accuracy, without relying on statistical postprocessing methods. The Waterfall module in UniPose leverages the efficiency of progressive filter- ing in the cascade architecture, while maintaining multi- scale fields-of-view comparable to spatial pyramid config- urations. Additionally, our method is extended to UniPose- LSTM for multi-frame processing and achieves state-of-the- art results for temporal pose estimation in Video. Our re- sults on multiple datasets demonstrate that UniPose, with a ResNet backbone and Waterfall module, is a robust and efficient architecture for pose estimation obtaining state-of- the-art results in single person pose detection for both sin- gle images and videos.
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the training set is LSPET ? and test dataset is LSP? #23

Closed YuQi9797 closed 3 years ago

YuQi9797 commented 3 years ago

https://github.com/bmartacho/UniPose/blob/master/utils/utils.py#L234-L240

the training set is LSPET ? and test dataset is LSP?

bmartacho commented 3 years ago

The provided dataset by http://sam.johnson.io/research/lsp.html consists of LSPET for training and LSP for testing.

jinchengll commented 3 years ago

@YuQi9797 你好,请问你已经成功运行作者的代码了吗?我没找到应该如何放置数据,比如MPII数据集和标签应该放置在哪里。

yyunhh commented 3 years ago

@bmartacho Hello, may I ask if the provided dataset link is closed right now? -> http://sam.johnson.io/research/lsp.html (consists of LSPET for training and LSP for testing)