Abstract

A depth camera is a kind of sensor that can directly collect distance information between an object and the camera. The RealSense D435i is a low-cost depth camera that is currently in widespread use. When collecting data, an RGB image and a depth image are acquired simultaneously. The quality of the RGB image is good, whereas the depth image typically has many holes. In a lot of applications using depth images, these holes can lead to serious problems. In this study, a repair method of depth images was proposed. The depth image is repaired using the texture synthesis algorithm with the RGB image, which is segmented through a multi-scale object-oriented method. The object difference parameter is added to the process of selecting the best sample block. In contrast with previous methods, the experimental results show that the proposed method avoids the error filling of holes, the edge of the filled holes is consistent with the edge of RGB images, and the repair accuracy is better. The root mean square error, peak signal-to-noise ratio, and structural similarity index measure from the repaired depth images and ground-truth image were better than those obtained by two other methods. We believe that the repair of the depth image can improve the effects of depth image applications.

Highlights

  • There are many real-world scene data capture methods used in the computer vision and geographic information fields

  • RGB image image was was segmented segmented through throughthe themulti-scale multi-scaleobject-oriented object-oriented method

  • Owing to the mechanism of hardware systems, there are holes in the depth image collected by the RealSense D435i depth camera

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Summary

Introduction

There are many real-world scene data capture methods used in the computer vision and geographic information fields. A traditional visual camera only supports the capture of two-dimensional (2D). Binocular Stereo Vision and light detection and ranging (LiDAR) were commonly used to obtain three-dimensional (3D) spatial information. The robustness of binocular vision is limited and LiDAR equipment is not power efficient. LiDAR is not simple to use on portable devices. A depth camera is a good alternative to binocular vision and LiDAR in collecting 3D information. A depth camera can directly capture the distance between an object and the camera

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