利用石灰进行物种鉴定的可解释方法

Mihir Nikam, Ameya Ranade, R. Patel, Prachi Dalvi, Aarti M. Karande
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引用次数: 0

摘要

植物鉴定在农学、天然和药用产品的发现等领域有着广泛的应用。本研究旨在探索各种深度学习技术,如InceptionV3、expect和ResNet来识别植物。高度精确的机器学习模型通常缺乏可解释性和可解释性。神经网络通常是不透明的系统,因此对解释的直接理解是必要的。我们的目标是通过引入可解释AI (Explainable AI, XAI)技术来消除模型如何得出结论的模糊性。可解释性旨在通过减少人工智能和机器学习模型缺乏透明度来打破这些障碍,从而朝着使人工智能可靠迈出一步。本文基于越南药用植物的叶、茎等部位的特征,利用卷积神经网络对越南药用植物图像进行识别。在识别之后,我们的论文还详细阐述了每个模型如何通过使用Lime包集成可解释AI (Explainable AI, XAI)来预测图像的哪一部分有助于CNN模型进行预测。通过这项研究,我们使用LIME软件包生成图像,这些图像突出了决定我们植物识别过程结果的像素。
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Explainable Approach for Species Identification using LIME
Plant identification has a wide array of applications in the fields of agronomy and the discovery of natural and medicinal products. This research aims to explore various deep learning techniques like InceptionV3, Xpection, and ResNet to identify plants. Highly accurate machine learning models generally lack explainability and interpretability. Neural networks are usually opaque systems and thus a direct understanding of the interpretations becomes necessary. We aim to remove this ambiguity of how the model reaches its conclusion by introducing Explainable AI (XAI) techniques. Explainability aims to break such barriers by diminishing the lack of transparency in Artificial Intelligence and Machine Learning models, thus taking a step toward making AI reliable. In this paper, Convolutional Neural Network has been used to identify Vietnamese medicinal plant images based on the characteristics of the leaves, stems and other parts of the plant. Upon identification, our paper also elaborates on how each model predicts which part of the image helps the CNN model to make a prediction by integrating Explainable AI (XAI) using the Lime package. Through this research, we generated images using LIME package which highlight pixels that determine the result of our plant identification process.
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