基于深度学习黑箱和模式识别分析的定向梯度cam植物岩识别。

IF 3.6 2区 生物学 Q1 PLANT SCIENCES
Iban Berganzo-Besga, Hector A Orengo, Felipe Lumbreras, Monica N Ramsey
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引用次数: 0

摘要

背景和目的:在本文中,视觉解释器应用于训练后的VGG19模型的黑箱,用于识别Avena, Hordeum和Triticum属的多细胞植物岩。目的是通过直观地突出深度学习模型用于对这些植物岩进行分类的植物岩特征来展示其正确的学习,然后我们将模型的方法与考古植物学家手动使用的方法进行比较。方法:用于此目的的可视化解释器是Grad-CAM,制导反向传播和制导Grad-CAM,后者是前两者的组合。这个组合工具不仅在显微镜图像上对植物岩进行分类时突出了最相关的区域,而且还强调了这些区域内的每个细节。关键结果:在对植物岩进行分类时,波浪模式作为决策者(关键识别特征)的重要性已在91%的显微镜图像中得到证明,在对Avena进行分类时,乳突也突出了86%的图像,在对具有乳突的图像进行分类时,乳突占94%,在对Triticum进行分类时,树突状长细胞形状占38%的图像。结论:利用Guided Grad-CAM对显微镜图像进行分析,验证了植物岩鉴定的既定模式,如波浪模式的重要性。此外,它揭示了不同属的植物岩特征的差异可能是突出的,并导致发现树突状长细胞形状作为一个独立的类别,也是独特的。这项研究是在计算考古学中建立一套计算机视觉最佳实践的努力的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Black-Box and Pattern Recognition Analysis Using Guided Grad-CAM for Phytolith Identification.

Background and aims: In this article, visual explainers are applied to give transparency to the black-box of a trained VGG19 model for the identification of multi-cell phytoliths of the Avena, Hordeum and Triticum genera. The aim is to demonstrate its proper learning by visually highlighting the phytolith characteristics that the deep learning model uses to classify these phytoliths, we then compare the model's methods to those employed manually by archaeobotanists.

Methods: The visual explainers used for this purpose are Grad-CAM, Guided Backpropagation and Guided Grad-CAM, the latter being a combination of the previous two. This combined tool not only highlights the most relevant regions when classifying phytoliths on microscope images, but also emphasises every detail within those areas.

Key results: The importance of the wave-pattern as a decision-maker (key identifying characteristic) when classifying phytoliths has been demonstrated for 91% of the microscope images, also highlighting the papillae when classifying Avena for its 86% images, 94% when images have papillae, and the dendritic long-cell shape when classifying Triticum for its 38% images.

Conclusions: The analysis of the microscope images using Guided Grad-CAM has validated the established patterns in phytolith identification, such as highlighting the significance of the wave-pattern. Additionally, it revealed that varying phytolith characteristics might be prominent for different genera and led to the discovery that dendritic long-cell shape, as an independent category, is also distinctive. This research is part of an effort to establish a set of computer vision best practices in computational archaeology.

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来源期刊
Annals of botany
Annals of botany 生物-植物科学
CiteScore
7.90
自引率
4.80%
发文量
138
审稿时长
3 months
期刊介绍: Annals of Botany is an international plant science journal publishing novel and rigorous research in all areas of plant science. It is published monthly in both electronic and printed forms with at least two extra issues each year that focus on a particular theme in plant biology. The Journal is managed by the Annals of Botany Company, a not-for-profit educational charity established to promote plant science worldwide. The Journal publishes original research papers, invited and submitted review articles, ''Research in Context'' expanding on original work, ''Botanical Briefings'' as short overviews of important topics, and ''Viewpoints'' giving opinions. All papers in each issue are summarized briefly in Content Snapshots , there are topical news items in the Plant Cuttings section and Book Reviews . A rigorous review process ensures that readers are exposed to genuine and novel advances across a wide spectrum of botanical knowledge. All papers aim to advance knowledge and make a difference to our understanding of plant science.
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