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Multi-layer Perceptron Architecture for Kinect-Based Gait Recognition

机译:基于Kinect的步态识别的多层感知器体系结构

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Accurate gait recognition is of high significance for numerous industrial and consumer applications, including virtual reality, online games, medical rehabilitation, video surveillance, and others. This paper proposes multi-layer perceptron (MLP) based neural network architecture for human gait recognition. Two unique geometric features: joint relative cosine dissimilarity (JRCD) and joint relative triangle area (JRTA) are introduced. These features are view and pose invariant, and thus enhance recognition performance. MLP model is trained using dynamic JRTA and JRCD sequences. The performance of the proposed MLP architecture is evaluated on publicly available 3D Kinect skeleton gait database and is shown to be superior to other state-of-the-art methods.
机译:准确的步态识别对于许多工业和消费者应用(包括虚拟现实,在线游戏,医疗康复,视频监控等)都具有重要意义。本文提出了一种基于多层感知器(MLP)的神经网络架构,用于人的步态识别。介绍了两个独特的几何特征:关节相对余弦不相似度(JRCD)和关节相对三角面积(JRTA)。这些特征是视图和姿势不变的,因此增强了识别性能。使用动态JRTA和JRCD序列训练MLP模型。在公开可用的3D Kinect骨架步态数据库上评估了所提出的MLP体系结构的性能,并证明它优于其他最新技术。

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