Stereo matching algorithm using deep learning and edge-preserving filter for machine vision

Shamsul Fakhar Abd Gani, M. F. Miskon, R. A. Hamzah, M. Hamid, A. F. Kadmin, A. I. Herman
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Abstract

Machine vision research began with a single-camera system, but these systems had various limitations from having just one point-of-view of the environment and no depth information, therefore stereo cameras were invented. This paper proposes a hybrid method of a stereo matching algorithm with the goal of generating an accurate disparity map critical for applications such as 3D surface reconstruction and robot navigation to name a few. Convolutional neural network (CNN) is utilised to generate the matching cost, which is then input into cost aggregation to increase accuracy with the help of a bilateral filter (BF). Winner-take-all (WTA) is used to generate the preliminary disparity map. An edge-preserving filter (EPF) is applied to that output based on a transform that defines an isometry between curves on the 2D image manifold in 5D and the real line to eliminate these artefacts. The transform warps the input signal adaptively to allow linear 1D filtering. Due to the filter's resistance to high contrast and brightness, it is effective in refining and removing noise from the output image. Based on experimental research employing a Middlebury standard validation benchmark, this approach gives high accuracy with an average non-occluded error of 6.71% comparable to other published methods.
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使用深度学习和边缘保留滤波器的机器视觉立体匹配算法
机器视觉研究始于单摄像头系统,但这些系统仅有一个环境视角,没有深度信息,因而存在各种局限性,因此立体摄像头应运而生。本文提出了一种立体匹配算法的混合方法,目的是生成对三维表面重建和机器人导航等应用至关重要的精确差异图。利用卷积神经网络(CNN)生成匹配成本,然后输入成本聚合,借助双边滤波器(BF)提高精确度。胜者为王(WTA)用于生成初步的差异图。边缘保留滤波器(EPF)应用于基于变换的输出,该变换定义了 5D 中 2D 图像流形上的曲线与实线之间的等距,以消除这些伪影。该变换对输入信号进行自适应扭曲,以实现线性一维滤波。由于滤波器对高对比度和高亮度的耐受性,它能有效地细化和消除输出图像中的噪声。根据采用米德尔伯里标准验证基准进行的实验研究,这种方法具有较高的准确性,平均非排除误差为 6.71%,可与其他已公布的方法相媲美。
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