基于卷积神经网络的梯度下降优化模型在低质量水下图像分类中的性能比较

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引用次数: 2

摘要

水下图像和分析在渔业管理和渔业科学中发挥着重要作用,有助于开发高效和自动化的工具来完成繁琐的任务,如鱼类物种识别、种群评估和丰度估计。大多数现有的分析工具仍然利用传统的统计算法和手工制作的图像处理技术,这些技术需要人工干预,效率低下,容易出现人为错误。基于计算机视觉的自动算法需要更好的泛化能力,并且应该有效地解决水下场景中存在的模糊性,并且可以通过基于人工神经网络的基于学习的算法来实现。本文研究了基于卷积神经网络(CNN)的水下图像分类模型在鱼类种类识别中的应用。本文还分析和评估了使用随机梯度下降(SGD)、Adagrad、RMSprop、Adadelta、Adam和Nadam等不同优化器对来自Fish4Knowledge(F4K)数据库的10类图像进行分类的CNN模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Comparison of Convolutional Neural Network-based model using Gradient Descent Optimization algorithms for the Classification of Low Quality Underwater Images
Underwater imagery and analysis plays a major role in fisheries management and fisheries science helping developing efficient and automated tools for cumbersome tasks such as fish species identification, stock assessment and abundance estimation. Majority of the existing tools for analysis still leverage conventional statistical algorithms and handcrafted image processing techniques which demand human interventions and are inefficient and prone to human errors. Computer vision based automated algorithms need a better generalisation capability and should be made efficient to address the ambiguities present in the underwater scenarios, and can be achieved through learning based algorithms based on artificial neural networks. This paper research about utilising the Convolutional Neural Network (CNN) based models for under water image classification for fish species identification. This paper also analyses and evaluates the performance of the proposed CNN models with different optimizers such as the Stochastic Gradient Descent (SGD),Adagrad, RMSprop, Adadelta, Adam and Nadam on classifying ten classes of images from the Fish4Knowledge(F4K) database.
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