Multi-species Fish Identification using Hybrid DeepCNN with Refined Squeeze and Excitation Architecture

IF 0.8 Q4 MARINE & FRESHWATER BIOLOGY Aquatic Sciences and Engineering Pub Date : 2022-10-19 DOI:10.26650/ase202221163202
Jansi Rani Sella Veluswami, Nivetha Panneerselvam
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Abstract

Fish play a prominent role in the food web and fish farming has value for both human consumption and tourist attractions. Due to the increasing importance of marine biodiversity, recognition of fish species has become a prominent task in monitoring the mislabelling of seafood and extinct species. This problem can be solved using traditional manual annotation on the images. To reduce manpow-er, cost, and tremendous time, deep learning approaches are used which always require large datasets. Therefore, fish species identification is a challenging task using disproportionately small data sets. In this research, we develop a new method by refining the squeeze and excitation network for the automatic fish species classification model to identify 23 different types of fish species. To achieve this, a hybrid framework using deep learning is proposed on a large-scale dataset and implemented transfer learning for a small-scale dataset. Deep learning methods can be used to identify fish in underwater images. In this study, we have proposed a new method of hybrid Deep Convolutional Neural Network (CNN) along with a Support Vector Machine (SVM) for classification. Additionally, the Squeeze and Excitation (SE) block has been improved for improved feature extraction. The proposed method achieved an accuracy of 97.90%. Then post-training with the small-scale dataset (Croatian) achieved an accuracy of 94.99% with an 11% improvement compared to Bilinear CNN (B-CNN) (Qui et al., 2018) and can be used in any underwater applications to identify fish species and avoid mislabelling of seafood.
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基于改进挤压和激励结构的混合深度CNN的多物种鱼类识别
鱼类在食物网中发挥着重要作用,鱼类养殖对人类消费和旅游景点都有价值。由于海洋生物多样性的重要性日益增加,识别鱼类已成为监测海鲜和灭绝物种标签错误的一项突出任务。这个问题可以通过在图像上使用传统的手动注释来解决。为了减少人力、成本和大量时间,使用了总是需要大型数据集的深度学习方法。因此,使用不成比例的小数据集进行鱼类物种识别是一项具有挑战性的任务。在这项研究中,我们开发了一种新的方法,通过改进挤压和激励网络,用于鱼类物种的自动分类模型,以识别23种不同类型的鱼类。为了实现这一点,在大规模数据集上提出了一种使用深度学习的混合框架,并在小规模数据集上实现了迁移学习。深度学习方法可用于识别水下图像中的鱼类。在这项研究中,我们提出了一种新的混合深度卷积神经网络(CNN)和支持向量机(SVM)的分类方法。此外,为了改进特征提取,对挤压和激励(SE)块进行了改进。所提出的方法实现了97.90%的准确率。然后,与双线性CNN(B-CNN)(Qui et al.,2018)相比,使用小规模数据集(克罗地亚)进行的后训练实现了94.99%的准确率,提高了11%,可用于任何水下应用,以识别鱼类并避免海鲜标签错误。
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来源期刊
Aquatic Sciences and Engineering
Aquatic Sciences and Engineering MARINE & FRESHWATER BIOLOGY-
CiteScore
1.30
自引率
0.00%
发文量
24
审稿时长
18 weeks
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