In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation
In this paper, we present a challenging task of 3D segmentation of individual plant leaves from occlusions in the complicated natural scene. Depth data of plant leaves is introduced to improve the robustness of plant leaf segmentation. The low cost RGB-D camera is utilized to capture depth and color...
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2015-08-01
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doaj-2625407a825244f393de1503ee4b9cd02020-11-24T23:48:54ZengMDPI AGSensors1424-82202015-08-01158204632047910.3390/s150820463s150820463In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural AutomationChunlei Xia0Longtan Wang1Bu-Keun Chung2Jang-Myung Lee3The Research Center for Coastal Environmental Engineering and Technology of Shandong Province, Yantai Institute of Coastal Zone Research, Chinese Academy of Sciences, Yantai 264003, ChinaSchool of Electrical Engineering, Pusan National University, Busan 609-735, KoreaDivision of Plant Environment, Gyeongsangnam-Do Agricultural Research and Extension Services, Jinju 660-985, KoreaSchool of Electrical Engineering, Pusan National University, Busan 609-735, KoreaIn this paper, we present a challenging task of 3D segmentation of individual plant leaves from occlusions in the complicated natural scene. Depth data of plant leaves is introduced to improve the robustness of plant leaf segmentation. The low cost RGB-D camera is utilized to capture depth and color image in fields. Mean shift clustering is applied to segment plant leaves in depth image. Plant leaves are extracted from the natural background by examining vegetation of the candidate segments produced by mean shift. Subsequently, individual leaves are segmented from occlusions by active contour models. Automatic initialization of the active contour models is implemented by calculating the center of divergence from the gradient vector field of depth image. The proposed segmentation scheme is tested through experiments under greenhouse conditions. The overall segmentation rate is 87.97% while segmentation rates for single and occluded leaves are 92.10% and 86.67%, respectively. Approximately half of the experimental results show segmentation rates of individual leaves higher than 90%. Nevertheless, the proposed method is able to segment individual leaves from heavy occlusions.http://www.mdpi.com/1424-8220/15/8/20463plant monitoringocclusionsleaf detectionmean shiftcenter of divergenceautomatic initialization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chunlei Xia Longtan Wang Bu-Keun Chung Jang-Myung Lee |
spellingShingle |
Chunlei Xia Longtan Wang Bu-Keun Chung Jang-Myung Lee In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation Sensors plant monitoring occlusions leaf detection mean shift center of divergence automatic initialization |
author_facet |
Chunlei Xia Longtan Wang Bu-Keun Chung Jang-Myung Lee |
author_sort |
Chunlei Xia |
title |
In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation |
title_short |
In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation |
title_full |
In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation |
title_fullStr |
In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation |
title_full_unstemmed |
In Situ 3D Segmentation of Individual Plant Leaves Using a RGB-D Camera for Agricultural Automation |
title_sort |
in situ 3d segmentation of individual plant leaves using a rgb-d camera for agricultural automation |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2015-08-01 |
description |
In this paper, we present a challenging task of 3D segmentation of individual plant leaves from occlusions in the complicated natural scene. Depth data of plant leaves is introduced to improve the robustness of plant leaf segmentation. The low cost RGB-D camera is utilized to capture depth and color image in fields. Mean shift clustering is applied to segment plant leaves in depth image. Plant leaves are extracted from the natural background by examining vegetation of the candidate segments produced by mean shift. Subsequently, individual leaves are segmented from occlusions by active contour models. Automatic initialization of the active contour models is implemented by calculating the center of divergence from the gradient vector field of depth image. The proposed segmentation scheme is tested through experiments under greenhouse conditions. The overall segmentation rate is 87.97% while segmentation rates for single and occluded leaves are 92.10% and 86.67%, respectively. Approximately half of the experimental results show segmentation rates of individual leaves higher than 90%. Nevertheless, the proposed method is able to segment individual leaves from heavy occlusions. |
topic |
plant monitoring occlusions leaf detection mean shift center of divergence automatic initialization |
url |
http://www.mdpi.com/1424-8220/15/8/20463 |
work_keys_str_mv |
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1725484102988070912 |