Javier Jareño, G. Bárcena-González, J. Castro-Gutiérrez, R. Cabrera-Castro, Pedro L. Galindo
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引用次数: 0
摘要
在渔港进行的鱼类拍卖中,准确标注标本的种类和大小起着关键作用。除其他相关信息外,这些标签还决定着拍卖准备过程的客观性,凸显了可靠标签系统的不可或缺性。从历史上看,这项工作一直依赖手工操作,容易受到相关人员主观解释的影响,从而损害商品的价值。因此,数字化和自动化标签系统的实施被认为是解决这一持续挑战的可行方案。本研究利用预先训练好的卷积神经网络,提出了一种用于标注物种和尺寸的自动系统。具体来说,结合数据增强技术和微调策略,对 VGG16、EfficientNetV2L、Xception 和 ResNet152V2 网络的性能进行了全面检查。实验结果表明,在物种分类方面,EfficientNetV2L 网络是最优秀的模型,其自动模式的平均 F 分数为 0.932,半自动模式的平均 F 分数为 0.976。在尺寸分类方面,引入了半自动模型,其中 Xception 网络是最优秀的模型,平均 F 分数达到 0.949。
Enhancing Fish Auction with Deep Learning and Computer Vision: Automated Caliber and Species Classification
The accurate labeling of species and size of specimens plays a pivotal role in fish auctions conducted at fishing ports. These labels, among other relevant information, serve as determinants of the objectivity of the auction preparation process, underscoring the indispensable nature of a reliable labeling system. Historically, this task has relied on manual processes, rendering it vulnerable to subjective interpretations by the involved personnel, therefore compromising the value of the merchandise. Consequently, the digitization and implementation of an automated labeling system are proposed as a viable solution to this ongoing challenge. This study presents an automatic system for labeling species and size, leveraging pre-trained convolutional neural networks. Specifically, the performance of VGG16, EfficientNetV2L, Xception, and ResNet152V2 networks is thoroughly examined, incorporating data augmentation techniques and fine-tuning strategies. The experimental findings demonstrate that for species classification, the EfficientNetV2L network excels as the most proficient model, achieving an average F-Score of 0.932 in its automatic mode and an average F-Score of 0.976 in its semi-automatic mode. Concerning size classification, a semi-automatic model is introduced, where the Xception network emerges as the superior model, achieving an average F-Score of 0.949.