Abstract

Obtaining high-quality depth maps and disparity maps with the use of a stereo camera is a challenging task for some kinds of objects. The quality of these maps can be improved by taking advantage of a larger number of cameras. The research on the usage of a set of five cameras to obtain disparity maps is presented. The set consists of a central camera and four side cameras. An algorithm for making disparity maps called multiple similar areas (MSA) is introduced. The algorithm was specially designed for the set of five cameras. Experiments were performed with the MSA algorithm and the stereo matching algorithm based on the sum of sum of squared differences (sum of SSD, SSSD) measure. Moreover, the following measures were included in the experiments: sum of absolute differences (SAD), zero-mean SAD (ZSAD), zero-mean SSD (ZSSD), locally scaled SAD (LSAD), locally scaled SSD (LSSD), normalized cross correlation (NCC), and zero-mean NCC (ZNCC). Algorithms presented were applied to images of plants. Making depth maps of plants is difficult because parts of leaves are similar to each other. The potential usability of the described algorithms is especially high in agricultural applications such as robotic fruit harvesting.

Highlights

  • Depth maps can be obtained on the basis of two images from a stereo camera

  • In order to analyze the performance of stereo matching algorithms for a set of five cameras, the author of this paper performed a series of experiments

  • Taking advantage of the five camera set makes it possible to increase the quality of disparity maps of plants both with the use of different kinds of matching measures and the multiple similar areas (MSA) algorithm

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Summary

Introduction

Depth maps can be obtained on the basis of two images from a stereo camera. The increase in a depth map precision is often achieved by using more advanced algorithms with higher computational complexity.[1,2] This paper presents a different approach for improving depth map quality. It is caused by the fact that leaves are similar to each other and they have many areas with the same color This is problematic in stereo matching algorithms as there are many areas of one image that have multiple candidate matches in the other image. This paper presents an application of a set of five cameras to making depth maps of plants. The paper presents the application of other matching measures to the set of cameras described by Park and Inoue.[4] this paper introduces the new algorithm for making depth maps called the multiple similar areas. (2) The design of the novel MSA algorithm for making depth maps on the basis of images from a set of multiple cameras. The original contributions of this paper are the following: (1) The analysis of using a five camera set to obtain depth maps of a plant on the basis of the SSSD measure and other measures. (2) The design of the novel MSA algorithm for making depth maps on the basis of images from a set of multiple cameras. (3) Results of using the MSA algorithm for a set of plants images. (4) Providing images of plants from a set of five cameras and ground truth data for these images

Related Work
Multicamera Vision Systems
Determining Distance Without Stereo Cameras
Related Work Summary
Five-Cameras Set
Matching Cost Functions
Matching Cost Functions for a Stereo Camera
Matching Cost Functions for a Set of Multiple Cameras
MSA Algorithm for a Pair of Cameras
MSA Algorithm for the Set of Five Cameras
Test Data
Quality Metrics
Results
Experiments with different matching measures
Experiments with the MSA algorithm
Threshold value in the MSA algorithm
Conclusions
Full Text
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