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A Neural-Network-Based Hand Posture Recognition Method

机译:基于神经网络的手姿势识别方法

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In various pattern recognition applications, angle variation is always a main challenging factor for producing reliable recognition. To increase the endurance ability on angle variation, this paper adopts a Hierarchical Temporal Memory (HTM) algorithm which applies temporal information to organize time-sequence change of image features, and constructs invariant features so that the influence of angle variation can be effectively learnt and overcome. The proposed multi-angle HTM-based posture recognition method consists of two main modules of Hand Posture Image Pre-processing (HPIP) and Hand Posture Recognition (HPR). In HPIP, each input image is first processed individually by skin color detection, foreground segmentation and edge detection. Then, the three processed results are further combined linearly to locate a hand posture region. In HPR, the normalized image is forwarded to a HTM model for learning and recognizing of different kinds of hand postures. Experiment results show that when using the same continuous unconstrained hand posture database, the proposed method can achieve an 89.1 % high recognition rate for discriminating three kinds of hand postures, which are scissors, stone and paper, and outperforms both Adaboost (78.1%) and SVM (79.9%).
机译:在各种模式识别应用中,角度变化始终是产生可靠识别的主要具有挑战性因素。为了提高角度变化的耐久性能力,本文采用分层时间记忆(HTM)算法,该算法应用时间信息来组织图像特征的时序变化,并构建不变的功能,以便可以有效地学习角度变化的影响克服。所提出的基于多角度HTM的姿势识别方法包括两种手部姿势图像预处理(HPIP)和手势识别(HPR)的主要模块组成。在HPIP中,通过肤色检测,前景分割和边缘检测单独处理每个输入图像。然后,三种加工结果进一步合并以定位手姿势区域。在HPR中,将归一化图像转发到HTM模型,用于学习和识别不同种类的手势姿势。实验结果表明,当使用相同的连续无约束手姿势数据库时,该方法可以达到89.1%的高识别率,以辨别三种手姿势,这是剪刀,石头和纸张,优于Adaboost(78.1%)和SVM(79.9%)。

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