基于迁移学习的鱼类分类

A. Agarwal, R. Tiwari, Vikas Khullar, R. Kaushal
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引用次数: 8

摘要

机器学习技术使系统能够从输入图像数据中学习重要的表示。卷积神经网络(cnn)是机器学习技术的具体实现,能够从输入图像中创建富有表现力的表示。因此,cnn非常适合于图像处理操作,如分类、聚类和目标检测等。创建一个新的有效的深度CNN模型需要一个广泛的训练阶段。这需要非常大的数据集、巨大的计算环境和更长的执行时间。几个已建立的深度cnn很容易获得。这些网络是在大量的图像数据库上进行预训练的。VGG, ResNet和InceptionResNetVZ是目前在许多图像处理研究中使用的领先的预训练CNN模型。也许我们可以转移从这些模型中学到的知识,以应对不同领域的挑战。这可以通过将深度CNN模型重新用作特征生成器来实现,为基于内容的信息检索应用程序生成有效的特征。本研究工作提出了一种使用深度卷积神经网络(如ResNet-50、InceptionResNetVZ和VGG16)识别鱼类的技术,这些神经网络已经使用迁移学习进行了预训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning Inspired Fish Species Classification
Machine learning techniques enable systems to learn Important representations from input Image data. Convolutional neural networks (CNNs) are a specific implementation of machine learning techniques and are able to create expressive representations from the input image. Hence CNNs are well suited for image processing operations such as classification, clustering, and object detection, etc. The creation of a new effectual deep CNN model involves an extensive training phase. This requires very large datasets, huge computation environments, and longer execution time. Several established deep CNNs are readily available. These networks are pre-trained on massive databases of images. VGG, ResNet, and InceptionResNetVZ are the leading pre-trained CNN models currently being used in numerous image-processing studies. Possibly we can transfer knowledge learned from such models in order to address challenges in different domains. This can be achieved by repurposing a deep CNN model as a feature generator to produce effective features for content based information retrieval applications. This research work proposes a technique for recognizing fish using deep convolutional neural networks such as ResNet-50, InceptionResNetVZ, and VGG16 that have been pre-trained using transfer learning.
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