Abstract

Dense disparity map estimation from a high-resolution stereo image is a very difficult problem in terms of both matching accuracy and computation efficiency. Thus, an exhaustive disparity search at full resolution is required. In general, examining more pixels in the stereo view results in more ambiguous correspondences. When a high-resolution image is down-sampled, the high-frequency components of the fine-scaled image are at risk of disappearing in the coarse-resolution image. Furthermore, if erroneous disparity estimates caused by missing high-frequency components are propagated across scale space, ultimately, false disparity estimates are obtained. To solve these problems, we introduce an efficient hierarchical stereo matching method in two-scale space. This method applies disparity estimation to the reduced-resolution image, and the disparity result is then up-sampled to the original resolution. The disparity estimation values of the high-frequency (or edge component) regions of the full-resolution image are combined with the up-sampled disparity results. In this study, we extracted the high-frequency areas from the scale-space representation by using difference of Gaussian (DoG) or found edge components, using a Canny operator. Then, edge-aware disparity propagation was used to refine the disparity map. The experimental results show that the proposed algorithm outperforms previous methods.

Highlights

  • A cyber-physical system (CPS) consists of various physical and software components, such as smart grids, autonomous automobile systems, process control systems, robotics systems, and automatic pilot avionics

  • We propose a hierarchical method that combines the disparity estimation results that are obtained in the coarse-resolution image with those for high-frequency components in the full-resolution image

  • This paper presented a hierarchical stereo matching method to combine disparity estimation results in two-scale space efficiently

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Summary

Introduction

A cyber-physical system (CPS) consists of various physical and software components, such as smart grids, autonomous automobile systems, process control systems, robotics systems, and automatic pilot avionics. A few stereo matching methods have recently been proposed to handle high-resolution images in near-real time [9,10,11]. This paper presents a hierarchical method to obtain a reliable disparity map of high-resolution stereo images in near-real time. To achieve a high-resolution disparity map, the stereo search area is limited to the span range that is centered at the suggestion from the disparity estimation values in the lower resolution This coarse-to-fine approach can improve computation performance significantly. In two-scale space representation (both coarse- and fine-resolution stereo images), the method proposed computes the initial matching costs by applying absolute difference (AD)-census and aggregates the matching costs in cross-based support regions [16,17].

Proposed Method
Initial
Matching Cost in Scale Space
Disparity Refinement
Experimental
Methods
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Comparison
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