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基于特征空间能量仿射建模的通用形状检测与分割。

Detection and segmentation of generic shapes based on affine modeling of energy in eigenspace.

机构信息

Electrical Engineering and Computer Science Department, University of Illinois, Chicago, IL 60607, USA.

出版信息

IEEE Trans Image Process. 2001;10(11):1621-9. doi: 10.1109/83.967390.

Abstract

This paper presents a novel approach for detection and segmentation of man made generic shapes in cluttered images. The set of shapes to be detected are members of affine transformed versions of basic geometric shapes such as rectangles, circles etc. The shape set is represented by its vectorial edge map transformed over a wide range of affine parameters. We use vectorial boundary instead of regular boundary to improve the robustness to noise, background clutter and partial occlusion. Our approach consists of a detection stage and a verification stage. In the detection stage, we first derive the energy from the principal eigenvectors of the set. Next, an a posteriori probability map of energy distribution is computed from the projection of the edge map representation in a vectorial eigen-space. Local peaks of the posterior probability map are located and indicate candidate detections. We use energy/probability based detection since we find that the underlying distribution is not Gaussian and resembles a hypertoroid. In the verification stage, each candidate is verified using a fast search algorithm based on a novel representation in angle space and the corresponding pose information of the detected shape is obtained. The angular representation used in the verification stage yields better results than a Euclidean distance representation. Experiments are performed in various interfering distortions, and robust detection and segmentation are achieved.

摘要

本文提出了一种新的方法,用于在杂乱图像中检测和分割人造通用形状。要检测的形状集是矩形、圆形等基本几何形状的仿射变换版本的成员。形状集由其在广泛的仿射参数下变换的向量边界图表示。我们使用向量边界而不是常规边界来提高对噪声、背景杂乱和部分遮挡的鲁棒性。我们的方法包括检测阶段和验证阶段。在检测阶段,我们首先从集合的主特征向量推导出能量。接下来,从向量特征空间中的边缘图表示的投影计算能量分布的后验概率图。定位后验概率图的局部峰值,并指示候选检测。我们使用基于能量/概率的检测,因为我们发现基础分布不是高斯分布,而是类似于超环面。在验证阶段,使用基于快速搜索算法的新角度空间表示来验证每个候选对象,并获得检测到的形状的相应姿势信息。验证阶段使用的角度表示比欧几里得距离表示产生更好的结果。在各种干扰失真下进行实验,实现了鲁棒的检测和分割。

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