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First-person activity recognition from micro-action representations using convolutional neural networks and object flow histograms

机译:使用卷积神经网络和物体流动直方图的微动态表示的第一人称活动识别

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摘要

A novel first-person human activity recognition framework is proposed in this work. Our proposed methodology is inspired by the central role moving objects have in egocentric activity videos. Using a Deep Convolutional Neural Network we detect objects and develop discriminant object flow histograms in order to represent fine-grained micro-actions during short temporal windows. Our framework is based on the assumption that large scale activities are synthesized by fine-grained micro-actions. We gather all the micro-actions and perform Gaussian Mixture Model clusterization, so as to build a micro-action vocabulary that is later used in a Fisher encoding schema. Results show that our method can reach 60%recognition rate on the benchmark ADL dataset. The capabilities of the proposed framework are also showcased by profoundly evaluating for a great deal of hyper-parameters and comparing to other State-of-the-Art works.
机译:在这项工作中提出了一种新的第一人称人类活动识别框架。 我们所提出的方法是由中央角色运动对象在Egentric活动视频中启发。 使用深度卷积神经网络,我们检测到对象并开发判别物体流动直方图,以便在短时间窗口期间表示细粒度的微动作。 我们的框架是基于通过细粒度微动织合成大规模活动的假设。 我们收集所有微动作并执行高斯混合模型集群化,以便构建稍后在Fisher编码模式中使用的微动词词汇表。 结果表明,我们的方法可以在基准ADL数据集中达到60%的识别率。 拟议框架的能力也被深刻评估了大量的超参数并与其他最先进的作品进行比较。

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