Abstract

Hand posture recognition (HPR), one of the most effective and intuitive human computer interfaces, has been extensively studied and widely adopted in various multimedia applications. Shape descriptors extracted from a hand contour or silhouette have been proved effective in representing a hand posture. However, it is difficult for these shape-based methods to achieve good balance between accuracy and efficiency. To this end, in this paper, we propose a novel hand shape descriptor based on a set of geometric features (SoGF) and Fisher Vector (FV), for effective and efficient HPR. Three types of geometric features, including distances, angles and curvatures, are extracted from a hand silhouette to form a discriminative local descriptor, and FV is adopted to encode the set of local descriptors for compact hand shape representation. To recognize hand postures, we construct a classifier using a multi-class Support Vector Machine (SVM) with FVs as input. The experimental results on four public HPR datasets show that the proposed method can achieve the mean accuracy of the state-of-the-art methods in real time.

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