植物表型深度学习的最新数据增强策略及其意义

D. Gomes, Lihong Zheng
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引用次数: 3

摘要

植物表型研究涉及植物与环境相互作用所产生的性状。计算机视觉(CV)技术为相关任务(如叶片计数、定义叶面积和跟踪植物生长)提供了有前途的非侵入性方法。在潜在的简历技术中,深度学习在过去几年一直很流行。这种兴趣的增加主要是由于发布了包含玫瑰植物的数据集,该数据集定义了基准解决方案的客观度量。本文讨论了该领域最近表现最好的作品的一个有趣方面:他们的主要贡献来自新颖的数据增强技术,而不是模型改进。此外,实验的设置是为了突出数据增强实践对有限的数据集与窄分布的重要性。本文旨在回顾产生合成数据的巧妙技术,以增强训练并显示其潜在重要性的证据。
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Recent Data Augmentation Strategies for Deep Learning in Plant Phenotyping and Their Significance
Plant phenotyping concerns the study of plant traits resulted from their interaction with their environment. Computer vision (CV) techniques represent promising, noninvasive approaches for related tasks such as leaf counting, defining leaf area, and tracking plant growth. Between potential CV techniques, deep learning has been prevalent in the last couple of years. Such an increase in interest happened mainly due to the release of a data set containing rosette plants that defined objective metrics to benchmark solutions. This paper discusses an interesting aspect of the recent best-performing works in this field: the fact that their main contribution comes from novel data augmentation techniques, rather than model improvements. Moreover, experiments are set to highlight the significance of data augmentation practices for limited data sets with narrow distributions. This paper intends to review the ingenious techniques to generate synthetic data to augment training and display evidence of their potential importance.
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