基于WTA哈希的多模态特征融合三维人体动作识别

Jun Ye, Kai Li, K. Hua
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引用次数: 5

摘要

随着商品深度传感器(如Kinect)的普及,包括RGB流、深度流和音频流在内的多模态数据已被用于视频游戏、教育和健康等各种应用。然而,如何有效地融合多模态数据的特征仍然是一个非常具有挑战性的问题。本文提出了一种基于WTA(赢者通吃)哈希的特征融合算法,并研究了该算法在三维人体动作识别中的应用。具体来说,执行WTA哈希将不同模态的特征编码到有序空间中。通过利用顺序度量而不是使用原始特征的绝对值,这种特征嵌入可以提供一种对尺度和数值扰动的弹性形式。我们提出了一种帧级特征融合算法,并开发了一种嵌入WTA哈希的扭曲算法来测量两个序列之间的相似性。在三个公开的三维人体动作数据集上进行的实验表明,即使采用最近邻搜索,所提出的融合算法也能获得最先进的识别结果。
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WTA Hash-Based Multimodal Feature Fusion for 3D Human Action Recognition
With the prevalence of the commodity depth sensors (e.g. Kinect), multimodal data including RGB stream, depth stream and audio stream have been utilized in various applications such as video games, education and health. Nevertheless, it is still very challenging to effectively fuse the features from multimodal data. In this paper, we propose a WTA (Winner-Take-All) Hash-based feature fusion algorithm and investigate its application in 3D human action recognition. Specifically, the WTA Hashing is performed to encode features from different modalities into the ordinal space. By leveraging the ordinal measures rather than using the absolute value of the original features, such feature embedding can provide a form of resilience to the scale and numerical perturbations. We propose a frame-level feature fusion algorithm and develop a WTA Hash-embedded warping algorithm to measure the similarity between two sequences. Experiments performed on three public 3D human action datasets show that the proposed fusion algorithm has achieved state-of-the-art recognition results even with the nearest neighbor search.
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