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Context-driven Multi-stream LSTM (M-LSTM) for Recognizing Fine-Grained Activity of Drivers

机译:上下文驱动的多流LSTM(M-LSTM),用于识别驾驶员的细粒度活动

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Automatic recognition of in-vehicle activities has significant impact on the next generation intelligent vehicles. In this paper, we present a novel Multi-stream Long Short-Term Memory (M-LSTM) network for recognizing driver activities. We bring together ideas from recent works on LSTMs, transfer learning for object detection and body pose by exploring the use of deep convolutional neural networks (CNN). Recent work has also shown that representations such as hand-object interactions are important cues in characterizing human activities. The proposed M-LSTM integrates these ideas under one framework, where two streams focus on appearance information with two different levels of abstractions. The other two streams analyze the contextual information involving configuration of body parts and body-object interactions. The proposed contextual descriptor is built to be semantically rich and meaningful, and even when coupled with appearance features it is turned out to be highly discriminating. We validate this on two challenging datasets consisting driver activities.
机译:自动识别车载活动对下一代智能车辆产生重大影响。在本文中,我们提出了一种用于识别驾驶员活动的新型多流长期短期存储器(M-LSTM)网络。我们通过探索使用深卷积神经网络(CNN),从最近的LSTMS中汇集在LSTMS上的近期工作,转移学习对象检测和身体姿势。最近的工作还表明,诸如手对象交互等的表示是表征人类活动的重要提示。建议的M-LSTM在一个框架下集成了这些想法,其中两个流专注于具有两种不同水平的抽象的外观信息。另外两个流分析了涉及身体部位和身体对象交互配置的上下文信息。建议的上下文描述符构建为语义上丰富和有意义,即使与外观特征相结合时,结果也是高度辨别的。我们在两个具有挑战性的数据集中验证这一点,包括驾驶员活动。

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