基于等效投影的全向视觉畸变不变性跟踪

Yazhe Tang, Shaorong Xie, F. Lin, Jianyu Yang, Youfu Li
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引用次数: 0

摘要

由于二次反射镜的存在,反射性全向图像存在严重的畸变。因此,大多数基于透视模型开发的视觉特征在直接应用于全向图像时,很难达到令人满意的效果。为了准确计算变形目标邻域,本文采用等效投影法有效地表述了全向相机的畸变。在等效投影的基础上,提出了一种畸变不变的多特征融合方法,用于全向图像的鲁棒特征表示。高斯混合模型(GMM)可以将多个特征集成到一个完整的概率框架中。也就是说,GMM将特征匹配问题转化为多通道聚类问题。基于片段的跟踪框架依靠自适应权重度量机制,可以鲁棒地处理部分遮挡。最后,通过一系列的实验来验证所提算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Equivalent projection based distortion invariant visual tracking for omnidirectional vision
Catadioptric omnidirectional images suffer from serious distortions because of quadratic mirrors involved. For that reason, most of visual features developed on the basis of the perspective model are difficult to achieve a satisfactory performance when directly applied to the omnidirectional image. To accurately calculate the deformed target neighborhood, this paper employs equivalent projection approach to effectively formulate the distortion of omnidirectional camera. On the basis of equivalent projection, this paper presents a distortion invariant multi-feature fusion method for robust feature representation in omnidirectional image. Given the Gaussian Mixture Model (GMM), multiple features can be integrated into a whole probability framework. In other words, GMM transforms the problem of features matching into the multi-channel clustering. The fragment-based tracking framework can robustly handle the partial occlusion relying on an adaptive weight metric mechanism. Finally, a series of experiments will be presented to validate the performance of the proposed algorithm.
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