Abstract

One of the common methods for measuring distance is to use a camera and image processing algorithm, such as an eye and brain. Mechanical stereo vision uses two cameras to shoot the same object and analyzes the disparity of the stereo vision. One of the most robust methods to calculate disparity is the well-known census transform, which has the problem of conversion window selection. In this paper, three methods are proposed to improve the performance of the census transform. The first one uses a low-pass band of the wavelet to reduce the computation loading and a high-pass band of the wavelet to modify the disparity. The main idea of the second method is the adaptive size selection of the conversion window by edge information. The third proposed method is to apply the adaptive window size to the previous sparse census transform. In the experiments, two indexes, percentage of bad matching pixels (PoBMP) and root mean squared (RMS), are used to evaluate the performance with the known ground truth data. According to the results, the computation required can be reduced by the multiresolution feature of the wavelet transform. The accuracy is also improved with the modified disparity processing. Compared with previous methods, the number of operation points is reduced by the proposed adaptive window size method.

Highlights

  • The development of automatic equipment has always been one of the focuses in the field of computer science

  • The experimental results show that the accuracies (PoBMP and root mean squared (RMS)) of the two methods are similar, but the proposed adaptive window sparse census transform (AWSCT) is better within the terms of operational requirements

  • We discussed the key problem of Census transform (CT), which is the size of the conversion window

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Summary

Introduction

The development of automatic equipment has always been one of the focuses in the field of computer science. The corresponding action can be performed by determining the distance, whether this is using a robot arm to grab the object [1], automatic car driving to determine the road condition [2,3], or using a robot that can self-plan a path to shuttle through the environment [4]. All of these studies show that measuring distance is an essential part of achieving automation

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