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首页> 外文期刊>International Journal of Intelligent Systems and Applications >Wavelet Based Histogram of Oriented Gradients Feature Descriptors for Classification of Partially Occluded Objects
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Wavelet Based Histogram of Oriented Gradients Feature Descriptors for Classification of Partially Occluded Objects

机译:基于小波的直方图梯度特征描述符直方图用于部分遮挡物体的分类

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摘要

Computer vision applications face various challenges while detection and classification of objects in real world like large variation in appearances, cluttered back ground, noise, occlusion, low illumination etc.. In this paper a Wavelet based Histogram of Oriented Gradients (WHOG) feature descriptors are proposed to represent shape information by storing local gradients in image. This results in enhanced representation of shape information. The performance of the feature descriptors are tested on multiclass image data set having partial occlusion, different scales and rotated object images. The performance of WHOG feature based object classification is compared with HOG feature based classification. The matching of test image with its learned class is performed using Back Propagation Neural Network (BPNN) algorithm. Proposed features not only performed superior than HOG but also beat wavelet, moment invariant and Curvelet.
机译:计算机视觉应用在现实世界中对对象进行检测和分类时面临各种挑战,例如外观变化大,背景杂乱,噪声,遮挡,低照度等。在本文中,基于小波的定向梯度直方图(WHOG)特征描述符提出通过在图像中存储局部梯度来表示形状信息。这导致形状信息的增强表示。在具有部分遮挡,不同比例和旋转的对象图像的多类图像数据集上测试了特征描述符的性能。将基于WHOG特征的对象分类的性能与基于HOG特征的分类进行比较。使用反向传播神经网络(BPNN)算法执行测试图像与其学习类别的匹配。提出的功能不仅表现优于HOG,而且还击败了小波,不变矩和Curvelet。

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