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Recent Data Augmentation Strategies for Deep Learning in Plant Phenotyping and Their Significance

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DOI:

https://doi.org/10.31224/osf.io/t3q5p

Keywords:

augmentation, counting, leaf, plant phenotyping, segmentation

Abstract

Plant phenotyping concerns the study of plant traits resulted from their interaction with their environment. Computer vision (CV) techniques represent promising, non-invasive 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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Posted

2020-08-04 — Updated on 2020-08-04

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