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Detection of Bluefin Tuna by Cascade Classifier and Deep Learning for Monitoring Fish Resources

机译:梯级分类器对蓝鳍金枪鱼的检测与监测鱼类资源的深度学习

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Detecting of specific species by image and video is a challenging task for cost-effectively fish monitoring systems. The current technologies to detect and count fishes for aquaculture are mainly based on sonar or manpower. The key problems to count fish in a fish cage using underwater optical cameras are uneven light distribution and fish overlapping. It also limits the application of traditional computer vision (CV) technologies. During recent years, the application of convolutional neural network (CNN) provides a deep-learning-based solution for fish monitoring. In this paper, an effective fish detection model based on region-based convolutional neural network (RCNN) is presented for counting Bluefin tuna in a fish cage, and a Haar feature-based cascade classifier model is provided for performance comparison. For model development, fish images captured by an underwater camera are extracted for training fish detection model. When we analyze a simple image in a fish cage as a primitive test, the RCNN model with 200 pieces of bluefin tuna image dataset in a fish cage has achieved the detection rate of91.5–and the accuracy of 92.4 %, while Haar cascade classifier presents the result of 67.0 and 53.8%, which means a significant number of tuna was reduced considering the number of tuna analyzed, respectively. Moreover, the training of RCNN by a RTX2080Ti GPU took only 52 seconds, about 1/35 of processing time of cascade classifier which trained by an Intel Core i5 CPU processor. Thus, the deep learning method with RCNN model performs an efficient effect on detecting underwater fish image and providing reliable analysis for aquaculture, which could help farmers count fishes more accurately with a larger dataset in the same time.
机译:通过图像和视频检测特定物种是具有成本有效的鱼类监测系统的具有挑战性的任务。目前检测和计数水产养殖鱼类的技术主要基于声纳或人力。使用水下光学摄像机在鱼笼中计算鱼的关键问题是不均匀的光分布和鱼重叠。它还限制了传统计算机视觉(CV)技术的应用。近年来,卷积神经网络(CNN)的应用为鱼类监测提供了基于深度学习的解决方案。本文介绍了一种基于区域的卷积神经网络(RCNN)的有效鱼类检测模型,用于计算鱼笼中的蓝鳍金枪鱼,并且提供了一种哈尔特征的级联分类器模型以进行性能比较。对于模型开发,提取由水下相机捕获的鱼图像以训练鱼类检测模型。当我们在鱼笼中分析一个简单的图像作为原始测试时,带有200件蓝鳍金枪鱼图像数据集的RCNN模型在鱼笼中实现了91.5的检出率 - 以及92.4%的准确性,而哈尔级联分类器呈现为67.0和53.8%的结果,这意味着考虑分析的金枪鱼数量减少了大量的金枪鱼。此外,RTX2080TI GPU的RCNN训练仅需52秒,大约1/35的级联分类器处理时间由英特尔核心I5 CPU处理器训练。因此,具有RCNN模型的深度学习方法对检测水下鱼图像进行有效效果,为水产养殖提供可靠的分析,这可以帮助农民在同一时间内更准确地使用较大的数据集。

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