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Stereo-camera-based object detection using fuzzy color histograms and a fuzzy classifier with depth and shape estimations

机译:使用模糊颜色直方图和带有深度和形状估计的模糊分类器的基于立体摄像机的目标检测

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This paper proposes a new method of detecting an object containing multiple colors with non homogeneous distributions in complex backgrounds and subsequently estimating the depth and shape of the object using a stereo camera. To extract features for object detection, this paper proposes fuzzy color histograms (FCHs) based on the self-splitting clustering ( SSC) of the hue-saturation (HS) color space. For each scanning window in a pyramid of scaled images, the FCH is obtained by accumulating the fuzzy degrees of all of the pixels belonging to each cluster. The FCH is fed to a fuzzy classifier to detect an object in the left image captured by the stereo camera. To find the matched object region in the right image, the left and right images are first segmented using the SSC-partitioned HS space. The depth of the object is then found by performing stereo matching on the segmented images. To find the shape of the object, a disparity map is built using the estimated object depth to automatically determine the stereo matching window size and disparity search range. Finally, the shape of the object is segmented from the disparity map. The experimental results of the detection of different objects with depth and shape estimations are used to verify the performance of the proposed method. Comparisons with different detection and disparity map construction methods are performed to demonstrate the advantage of the proposed method. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文提出了一种新方法,该方法可以检测复杂背景中包含不均匀分布的多种颜色的对象,然后使用立体相机估计对象的深度和形状。为了提取用于目标检测的特征,本文提出了基于色饱和度(HS)颜色空间的自分裂聚类(SSC)的模糊颜色直方图(FCH)。对于按比例缩放的图像金字塔中的每个扫描窗口,通过累积属于每个群集的所有像素的模糊度来获得FCH。 FCH被馈送到模糊分类器,以检测立体声相机捕获的左图像中的对象。为了在右图像中找到匹配的对象区域,首先使用SSC划分的HS空间对左图像和右图像进行分割。然后,通过对分割后的图像进行立体匹配来找到对象的深度。为了找到对象的形状,使用估计的对象深度构建视差图,以自动确定立体匹配窗口大小和视差搜索范围。最后,从视差图中分割出对象的形状。利用深度和形状估计来检测不同物体的实验结果用于验证所提方法的性能。比较了不同的检测和视差图构建方法,以证明该方法的优势。 (C)2015 Elsevier B.V.保留所有权利。

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