Classification of Aquatic Animals by the Spherical Amphibian Robot based on Transfer Learning

Shuxiang Guo, Shaolong Wang, Jian Guo, Jigang Xu
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引用次数: 1

Abstract

The spherical robot is mainly used for normal observation of aquaculture biology. The performance of aquatic biological image recognition mainly depends on the feature extraction and the selected classifier. Traditional manual extraction methods often cannot meet actual application requirements, and have problems such as poor accuracy and weak generalization ability. To solve the above problems, a small data set aquatic animal classification model based on convolutional neural network and transfer learning is proposed in the spherical robot. First, the original images of aquatic animals is preprocessed, and the data set is enhanced using the data increment method. Second, The original CNN model is then improved by embedding the SE module and using the triplet loss function to replace the softmax loss function. Finally, Transfer learning a deep pre-trained model of the ImageNet image data set. Training and fitting parameter distributions on aquatic image data sets. Experimental results show that the model optimizes the accuracy of aquatic animal target recognition, and the test accuracy reaches 93.11%.The model has good stability and high precision in aquaculture environment.
基于迁移学习的球形两栖机器人对水生动物的分类
球形机器人主要用于水产养殖生物的正常观察。水生生物图像识别的性能主要取决于特征提取和分类器的选择。传统的人工提取方法往往不能满足实际应用需求,存在精度差、泛化能力弱等问题。为解决上述问题,在球形机器人中提出了一种基于卷积神经网络和迁移学习的小数据集水生动物分类模型。首先,对水生动物原始图像进行预处理,并采用数据增量法对数据集进行增强;其次,通过嵌入SE模块对原有CNN模型进行改进,并用三重态损失函数代替softmax损失函数。最后,迁移学习ImageNet图像数据集的深度预训练模型。水生图像数据集参数分布的训练与拟合。实验结果表明,该模型优化了水生动物目标识别的精度,测试准确率达到93.11%。该模型在水产养殖环境中具有良好的稳定性和较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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