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Alternative Semantic Representations for Zero-Shot Human Action Recognition

机译:零发人类动作识别的替代语义表示

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A proper semantic representation for encoding side information is key to the success of zero-shot learning. In this paper, we explore two alternative semantic representations especially for zero-shot human action recognition: textual descriptions of human actions and deep features extracted from still images relevant to human actions. Such side information are accessible on Web with little cost, which paves a new way in gaining side information for large-scale zero-shot human action recognition. We investigate different encoding methods to generate semantic representations for human actions from such side information. Based on our zero-shot visual recognition method, we conducted experiments on UCF101 and HMDB51 to evaluate two proposed semantic representations. The results suggest that our proposed text- and image-based semantic representations outperform traditional attributes and word vectors considerably for zero-shot human action recognition. In particular, the image-based semantic representations yield the favourable performance even though the representation is extracted from a small number of images per class. Code related to this chapter is available at: http://staff.cs.manchester.ac.uk/~kechen/BiDiLEL/ Data related to this chapter are available at: http://staff.cs.manchester.ac.uk/~kechen/ASRHAR/
机译:编码侧信息的适当语义表示是零射击学习成功的关键。在本文中,我们探讨了两个替代的语义表示,特别是对于零射击人类行动识别:人类行为的文本描述和从仍然与人类行动相关的图像中提取的深度特征。这种侧面信息可以在Web上获得,几乎没有成本,这在获得了大规模零射击人类动作识别的侧面信息中铺平了一种新的方式。我们调查不同的编码方法,以从这些侧面信息生成人类行动的语义表示。基于我们的零射视觉识别方法,我们对UCF101和HMDB51进行了实验,以评估两个提出的语义表示。结果表明,我们所提出的文本和基于形象的语义表示表明,对于零射击人类行动识别,大大倾向于传统的属性和词汇矢量。特别地,即使从每个类的少量图像中提取表示,基于图像的语义表示也会产生有利的性能。与本章相关的代码可用于:http://staff.cs.manchester.ac.uk/~~kechen/bidilel/与本章相关的数据可用于:http://staff.cs.manchester.ac.uk /〜Kechen / Asrhar /

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