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Multi-Level Analysis of Bit-Plane Based GLAC Feature and other Existing Texture Features for a Robust Hand Detection System

机译:基于位平面的GLAC特征和其他现有纹理特征的多层分析,用于稳健的手部检测系统

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Hand detection is the vital step towards developing a gesture recognition system. Robust hand detection is a challenging task and needs a deeper investigation of hand-oriented features under practical conditions. Existing texture features such as Histogram of oriented gradients (HOG), and Gabor feature are efficient but requires high extraction time due to their dense nature. If the feature is extracted from an edge-filtered imaged, only the vital edge features will be processed while reducing the computation and time complexity. Therefore present work proposes a bit-plane based feature extraction approach. Also, a new texture feature is proposed, Gradient Local Auto-Correlations (GLAC) that extracts the 2nd order statistical parameters such as curvature statistics unlike HOG, Gabor, and histogram feature. GLAC is also modified to GLACgrid feature to extract local texture feature by using spatial binning grids of 2×3 with 5 orientation bins. Experimental observations showed that performance of GLACgrid feature is approx. 3.5%, 10.6%, and 19% higher than HOG, Gabor and histogram feature, respectively. Evaluation models are developed using Naïve Bayes classifier, Real AdaBoost, Gentle AdaBoost, Modest AdaBoost, support vector machine (SVM). Response time of bit-plane GLAC features are considerably lower than HOG and Gabor feature, which makes it an efficient candidate for realtime hand detection systems.
机译:手部检测是开发手势识别系统的关键步骤。鲁棒的手检测是一项艰巨的任务,需要在实际条件下对手导向功能进行更深入的研究。现有的纹理特征(如定向梯度直方图(HOG)和Gabor特征)是有效的,但由于其密集的性质而需要较长的提取时间。如果从经过边缘滤波的图像中提取特征,则仅处理重要的边缘特征,同时减少了计算量和时间复杂度。因此,本工作提出了一种基于位平面的特征提取方法。此外,提出了一个新的纹理特征,即梯度局部自相关(GLAC),该特征提取了2 nd 阶统计参数,例如曲率统计,与HOG,Gabor和直方图功能不同。 GLAC还被修改为GLACgrid特征,以通过使用具有5个方向分箱的2×3空间分箱网格来提取局部纹理特征。实验观察表明,GLACgrid功能的性能约为。分别比HOG,Gabor和直方图特征高3.5%,10.6%和19%。评估模型是使用朴素贝叶斯分类器,Real AdaBoost,Gentle AdaBoost,Modest AdaBoost,支持向量机(SVM)开发的。位平面GLAC功能的响应时间大大低于HOG和Gabor功能,这使其成为实时手部检测系统的有效候选者。

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