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A hybrid framework for online recognition of activities of daily living in real-world settings

机译:混合框架,用于在线识别日常生活在现实世界环境中的活动

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Many supervised approaches report state-of-the-art results for recognizing short-term actions in manually clipped videos by utilizing fine body motion information. The main downside of these approaches is that they are not applicable in real world settings. The challenge is different when it comes to unstructured scenes and long-term videos. Unsupervised approaches have been used to model the long-term activities but the main pitfall is their limitation to handle subtle differences between similar activities since they mostly use global motion information. In this paper, we present a hybrid approach for long-term human activity recognition with more precise recognition of activities compared to unsupervised approaches. It enables processing of long-term videos by automatically clipping and performing online recognition. The performance of our approach has been tested on two Activities of Daily Living (ADL) datasets. Experimental results are promising compared to existing approaches.
机译:许多监督方法报告最先进的结果,通过利用细身运动信息来识别手动剪辑视频的短期措施。这些方法的主要缺点是它们不适用于现实世界环境。在非结构化场景和长期视频方面存在挑战是不同的。未经监督的方法已被用于模拟长期活动,但主要缺陷是它们限制,以处理类似活动之间的微妙差异,因为它们主要使用全球运动信息。在本文中,我们为长期人类活动识别提供了一种混合方法,与无监督的方法相比,对活动的更精确识别。它可以通过自动剪切和执行在线识别来处理长期视频。我们的方法的表现已经在每日生活(ADL)数据集的两项活动中进行了测试。与现有方法相比,实验结果是有前途的。

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