CSgI:基于深度学习的大麻叶片品系分类方法

S. Rajora, Dinesh kumar Vishwakarma, Kuldeep Singh, M. Prasad
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引用次数: 7

摘要

本文提出了一种新的方法,将各种大麻/大麻叶子的图像分类到各自的菌株和类型中。所提出的体系结构采用双重技术,当按必要的顺序实现时,将为分类问题陈述提供显著的结果。第一部分是图像的分割或前景提取,重点是使用鲁棒分割算法提取感兴趣区域(RDI),该算法可以将前景与图像适当分离;第二部分是深度学习,专注于结果分类任务。本文通过迁移学习范式(用于手头训练数据较少的应用实例)和从头开始训练整个CNN原型(用于手头训练数据充足的应用实例)对实现该分类问题进行了定量分析。因此,总的来说,所提出的方法独特地为所提出的分类问题部署了卷积神经网络,具有方法和实现的双重方面:a)迁移学习和b)从头开始训练整个CNN。所提出的工作的新颖性可以被认为是在各自的应用领域中首次构建了一个鲁棒算法,该算法足以在将大麻的菌株/类型或大麻叶子图像馈送到系统进行分类时呈现正确的类别标签。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CSgI: A Deep Learning based approach for Marijuana Leaves Strain Classification
This paper proposes a novel approach that classifies the images of various marijuana/cannabis leaves into their respective classes of strains and types. The proposed architecture works on a two-fold technique which when implemented in the requisite sequence delivers phenomenal results to the classification problem statement. The first fold, being the segmentation or foreground extraction in the images, focuses on extracting the RDI (Region of Interest) using a robust segmentation algorithm which can suitable separate the foreground from the image; and the second fold, being the Deep Learning aspect focuses on the result classification task. This literature gives a quantitative analysis of implementing this classification problem vide a transfer learning paradigm (for application instances with less training data in hand) & training the entire CNN archetype from scratch (for application instances with sufficient training data in hand). Thus, altogether the proposed methodology distinctively deploys ConvNets for the posed classification problem having dual aspects of approaches & implementation wiz: a) Transfer Learning & b) Training the entire CNN from scratch. The novelty of the proposed work can be counted upon as the construction of a robust algorithm very first of its kind in this respective application domain which is potent enough to render the correct class label of the strain/type of marijuana or cannabis leaf image when fed to the system for classification.
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