使用深度学习方法进行对象检测和分割的鱼龄阅读

IF 3.1 2区 农林科学 Q1 FISHERIES ICES Journal of Marine Science Pub Date : 2024-02-27 DOI:10.1093/icesjms/fsae020
Arjay Cayetano, Christoph Stransky, Andreas Birk, Thomas Brey
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引用次数: 0

摘要

确定个体年龄是准确评估鱼类种群的一个重要步骤。在非热带环境中,人工计数鱼类耳石(耳石)中的环状生长形态是标准方法。这种方法依赖视觉手段和个人判断,因此容易出现偏差和解释错误。使用基于机器学习的自动模式识别可能有助于克服这一问题。在此,我们采用了两种基于卷积神经网络(CNN)的深度学习方法。第一种方法利用掩膜 R-CNN 算法对主要耳石读数轴进行目标检测。第二种方法采用 U-Net 架构对耳石图像进行语义分割,以分离感兴趣的区域。对于这两种方法,我们都进行了简单的后处理,对返回的输出掩膜上的环进行计数,这与年龄预测相对应。多个基准测试表明,我们所实施的方法性能良好,可与最近发布的基于经典图像处理和传统 CNN 实施的方法相媲美。此外,与现有方法相比,我们的算法显示出更高的鲁棒性,同时还具有推断缺失年龄组和适应新领域或数据源的能力。
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Fish age reading using deep learning methods for object-detection and segmentation
Determination of individual age is one essential step in the accurate assessment of fish stocks. In non-tropical environments, the manual count of ring-like growth patterns in fish otoliths (ear stones) is the standard method. It relies on visual means and individual judgment and thus is subject to bias and interpretation errors. The use of automated pattern recognition based on machine learning may help to overcome this problem. Here, we employ two deep learning methods based on Convolutional Neural Networks (CNNs). The first approach utilizes the Mask R-CNN algorithm to perform object detection on the major otolith reading axes. The second approach employs the U-Net architecture to perform semantic segmentation on the otolith image in order to segregate the regions of interest. For both methods, we applied a simple postprocessing to count the rings on the output masks returned, which corresponds to the age prediction. Multiple benchmark tests indicate the promising performance of our implemented approaches, comparable to recently published methods based on classical image processing and traditional CNN implementation. Furthermore, our algorithms showed higher robustness compared to the existing methods, while also having the capacity to extrapolate missing age groups and to adapt to a new domain or data source.
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来源期刊
ICES Journal of Marine Science
ICES Journal of Marine Science 农林科学-海洋学
CiteScore
6.60
自引率
12.10%
发文量
207
审稿时长
6-16 weeks
期刊介绍: The ICES Journal of Marine Science publishes original articles, opinion essays (“Food for Thought”), visions for the future (“Quo Vadimus”), and critical reviews that contribute to our scientific understanding of marine systems and the impact of human activities on them. The Journal also serves as a foundation for scientific advice across the broad spectrum of management and conservation issues related to the marine environment. Oceanography (e.g. productivity-determining processes), marine habitats, living resources, and related topics constitute the key elements of papers considered for publication. This includes economic, social, and public administration studies to the extent that they are directly related to management of the seas and are of general interest to marine scientists. Integrated studies that bridge gaps between traditional disciplines are particularly welcome.
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