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Using novel shape, color and texture descriptors for human hand detection

机译:使用新颖的形状,颜色和纹理描述符进行人的手检测

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In this paper, we present a robust feature set to detect human hands in still images having simple as well as complex backgrounds. Our method relies on using a blend of existing and new shape-based, color-based and texture-based features. First, we identify the shortcomings of two existing features: Histograms of Oriented Gradient (HOG) and Color Name (CN). For HOG, we investigate the scenarios where the traditional block normalization schemes generate noisy results in near uniform regions in the image background and impede the accurate detection of human hands. We offer a more effective block normalization scheme for our new shape-based feature, αHOG, which results in considerably improved detection. Our new color-based feature, Clipped Color Name (CCN), caters for the noise induced color labels encountered in the CN feature, by modifying the probability assignment method for the basic colors in each pixel. For capturing the texture cues, we employ Local Binary Patterns (LBP) and Local Trinary Patterns (LTP). We compare the relative performance of the individual features in isolation and in different feature sets. For feature sets' comparison, the issue of high dimensional feature space generated as a result of feature fusion is addressed by using Partial Least Squares (PLS) for dimensionality reduction. Subsequently, we employ the non-linear Radial Basis Function Support Vector Machine (RBF SVM) classifier on PLS reduced feature sets. In our experiments, we use two different image datasets, namely the benchmark Cambridge Gesture Dataset (having simple backgrounds) and our own dataset (having a wider variety of complex backgrounds). Based on the experimental results, we find that out of the four feature sets we use, the feature set consisting of αHOG, CCN and LTP gives the best results in terms of the combined criteria of classification accuracy and computation time, and also offers improvement over the feature set proposed by Hussain and Triggs [- ].
机译:在本文中,我们提出了一种强大的功能集,可以检测具有简单和复杂背景的静态图像中的人手。我们的方法依赖于将现有和新的基于形状,基于颜色和基于纹理的特征混合使用。首先,我们确定两个现有功能的缺点:定向渐变直方图(HOG)和颜色名称(CN)。对于HOG,我们调查了以下情况:传统的块归一化方案在图像背景中接近均匀的区域中产生嘈杂的结果,并阻碍了人手的准确检测。我们为基于形状的新特征αHOG提供了更有效的块归一化方案,从而大大提高了检测效率。我们新的基于颜色的功能,即“剪裁的颜色名称(CCN)”,通过修改每个像素中基本颜色的概率分配方法,来满足CN功能中遇到的由噪声引起的颜色标签。为了捕获纹理提示,我们采用了本地二进制模式(LBP)和本地三进制模式(LTP)。我们比较了隔离和不同功能集中各个功能的相对性能。为了进行特征集比较,通过使用偏最小二乘(PLS)来减少维数,从而解决了由于特征融合而产生的高维特征空间的问题。随后,我们在PLS约简特征集上采用了非线性径向基函数支持向量机(RBF SVM)分类器。在我们的实验中,我们使用两个不同的图像数据集,即基准的Cambridge Gesture数据集(具有简单的背景)和我们自己的数据集(具有各种复杂的背景)。根据实验结果,我们发现在所使用的四个特征集中,由αHOG,CCN和LTP组成的特征集在分类准确度和计算时间的组合标准方面提供了最佳结果,并且在Hussain和Triggs [-]提出的功能集。

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