基于统计模型的立体视觉等视差条带宽度提取

Benyamin Kheradvar, A. Mousavinia, A. M. Sodagar
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引用次数: 0

摘要

视差图图像作为立体视觉系统的输出,在处理过程中需要深度信息的应用中是一种有效的方法。这类应用的一个例子是使用等视差条的概念从场景中提取具有任意属性的平面。条带的宽度和方向取决于其在三维空间中的平面方向和位置。在本文中,进行了统计分析,以模拟这些带材的行为。这种统计分析和频率分析表明,对于每组等视差条带,它们对应于三维中的单个平面,条带的宽度可以用加性高斯噪声(AGN)叠加的平均值来表示。这意味着一个简单的平均技术可以显著降低应用中的测量噪声,如使用这些条带进行地面检测。结果表明,采用该噪声模型测量等视差带宽度的平均精度可达96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting Iso-Disparity Strip Width using a Statistical Model in a Stereo Vision System
Disparity map images, as outputs of a stereo vision system, are known as an effective approach in applications that need depth information in their procedure. One example of such applications is extracting planes with arbitrary attributes from a scene using the concept of iso-disparity strips. The width and direction of strips depend on the plane direction and position in the 3D space. In this paper, a statistical analysis is performed to model the behavior of these strips. This statistical analysis as well as a frequency analysis reveal that for each group of iso-disparity strips, which are corresponding to a single plane in 3D, the width of strips can be represented by an average value superposed by an Additive Gaussian Noise (AGN). This means that a simple averaging technique can significantly reduce the measurement noise in applications such as ground detection using these strips. Results show that the width of iso-disparity strips can be measured with an average precision of 96% using the presented noise model.
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