A fast high throughput plant phenotyping system using YOLO and Chan-Vese segmentation

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Soft Computing Pub Date : 2024-08-05 DOI:10.1007/s00500-024-09946-y
S. Jain, Dharavath Ramesh, E. Damodar Reddy, Santosha Rathod, Gabrijel Ondrasek
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Abstract

Understanding plant traits is essential for decoding the behavior of various genomes and their reactions to environmental factors, paving the way for efficient and sustainable agricultural practices. Image-based plant phenotyping has become increasingly popular in modern agricultural research, effectively analyzing large-scale plant data. This study introduces a new high-throughput plant phenotyping system designed to examine plant growth patterns using segmentation analysis. This system consists of two main components: (i) A plant detector module that identifies individual plants within a high-throughput imaging setup, utilizing the Tiny-YOLOv4 (You Only Look Once) architecture. (ii) A segmentation module that accurately outlines the identified plants using the Chan-Vese segmentation algorithm. We tested our approach using top-view RGB tray images of the ‘Arabidopsis Thaliana’ plant species. The plant detector module achieved an impressive localization accuracy of 96.4% and an average Intersection over Union (IoU) of 77.42%. Additionally, the segmentation module demonstrated strong performance with dice and Jaccard scores of 0.95 and 0.91, respectively. These results highlight the system’s capability to define plant boundaries accurately. Our findings affirm the effectiveness of our high-throughput plant phenotyping system and underscore the importance of employing advanced computer vision techniques for precise plant trait analysis. These technological advancements promise to boost agricultural productivity, advance genetic research, and promote environmental sustainability in plant biology and agriculture.

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利用 YOLO 和 Chan-Vese 分割技术的快速高通量植物表型系统
了解植物性状对于解码各种基因组的行为及其对环境因素的反应至关重要,从而为高效、可持续的农业实践铺平道路。基于图像的植物表型在现代农业研究中越来越受欢迎,它能有效地分析大规模植物数据。本研究介绍了一种新的高通量植物表型系统,旨在利用分割分析研究植物的生长模式。该系统由两个主要部分组成:(i) 植物检测器模块,利用 Tiny-YOLOv4(You Only Look Once)架构在高通量成像装置中识别单个植物。(ii) 一个分割模块,利用 Chan-Vese 分割算法准确勾勒出识别出的植物。我们使用 "拟南芥 "植物物种的顶视 RGB 托盘图像测试了我们的方法。植物检测器模块的定位精度达到了令人印象深刻的 96.4%,平均联合交叉率 (IoU) 为 77.42%。此外,分割模块也表现出色,骰子和 Jaccard 分数分别为 0.95 和 0.91。这些结果凸显了系统准确定义植物边界的能力。我们的研究结果肯定了高通量植物表型系统的有效性,并强调了采用先进计算机视觉技术进行精确植物性状分析的重要性。这些技术进步有望提高农业生产力,推动遗传研究,促进植物生物学和农业的环境可持续发展。
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来源期刊
Soft Computing
Soft Computing 工程技术-计算机:跨学科应用
CiteScore
8.10
自引率
9.80%
发文量
927
审稿时长
7.3 months
期刊介绍: Soft Computing is dedicated to system solutions based on soft computing techniques. It provides rapid dissemination of important results in soft computing technologies, a fusion of research in evolutionary algorithms and genetic programming, neural science and neural net systems, fuzzy set theory and fuzzy systems, and chaos theory and chaotic systems. Soft Computing encourages the integration of soft computing techniques and tools into both everyday and advanced applications. By linking the ideas and techniques of soft computing with other disciplines, the journal serves as a unifying platform that fosters comparisons, extensions, and new applications. As a result, the journal is an international forum for all scientists and engineers engaged in research and development in this fast growing field.
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