Object pose detection in the presence of background clutter and occlusion

E. DuPont, H. G. Yu, R. Roberts
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引用次数: 1

Abstract

This work explores image processing techniques that involve the application of eigenspace methods for pose detection. An eigenspace method for data compression used in the image processing field is commonly referred to as principal component analysis (PCA). We present some recently introduced eigenspace concepts for detecting the pose angle of an occluded object located in an image containing background clutter. To detect the pose of a target object in the presence of background and occlusions we analyze two eigendecomposition methods. The quadtree structure includes dividing the training images into quadrants and creating a subspace eigendecomposition for each level. A statistical robust approach is also applied that weights the background and occlusion pixels based on their influence on the reconstruction of the desired target object. We review both of these pose detection approaches and illustrate each application with an example.
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背景杂波和遮挡下的目标姿态检测
这项工作探讨了涉及应用特征空间方法进行姿态检测的图像处理技术。用于图像处理领域的数据压缩的特征空间方法通常被称为主成分分析(PCA)。我们提出了一些新引入的特征空间概念,用于检测背景杂波图像中被遮挡物体的位姿角。为了在背景和遮挡下检测目标物体的姿态,我们分析了两种特征分解方法。四叉树结构包括将训练图像划分为象限,并为每个象限创建子空间特征分解。还应用了一种统计鲁棒方法,根据背景和遮挡像素对所需目标物体重建的影响对其进行加权。我们回顾了这两种姿态检测方法,并举例说明了每种应用。
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