Automatic Detection of Nephrops norvegicus Burrows in Underwater Images Using Deep Learning

A. Naseer, E. Baro, Sultan Daud Khan, Y. V. Gordillo
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引用次数: 5

Abstract

Autonomous Underwater Vehicles and Remotely Operated Vehicles equipped with HD cameras are used by the scientist to capture the underwater footages efficiently and accurately. The abundance of the Norway Lobster Nephrops norvegicus stock in the Gulf of Cadiz is assessed based on the identification and counting of the burrows where they live, using underwater videos. The Instituto Español de Oceanografía (IEO) conducts an annual standard underwater television survey (UWTV) to generate burrow density estimates of Nephrops within a defined area, with a coefficient of variation (CV) or relative standard error of less than 20%. Currently, the identification and counting of the Nephrops burrows are carried out manually by the experts. This is quite hectic and time consuming job. Computer Vision and Deep learning plays a vital role now a days in detection and classification of objects. The proposed system introduces a deep learning based automated way to identify and classify the Nephrops burrows. The proposed work is using current state of the art Faster RCNN models Inception v2 and MobileNet v2 for objects detection and classification. Tensorflow is used to evaluate the Inception and MobileNet performance with different numbers of training images. The average mean precision of Inception is more than 75% as compared to MobileNet which is 64%. The results show the comparison of Inception and MobileNet detections, as well as the calculation of True Positive and False Positive detections along with undetected burrows.
基于深度学习的水下图像褐家鼠洞穴自动检测
科学家使用配备高清摄像机的自主水下航行器和遥控航行器高效准确地捕捉水下图像。加的斯湾挪威龙虾(norwegian Lobster Nephrops norvegicus)的丰度是根据对它们生活的洞穴的识别和计数,使用水下视频来评估的。Español de Oceanografía研究所(IEO)每年进行一次标准水下电视调查(UWTV),以在确定的区域内产生肾脏病变的洞穴密度估计,变异系数(CV)或相对标准误差小于20%。目前,肾脏洞的识别和计数是由专家手工进行的。这是一项相当忙碌和耗时的工作。如今,计算机视觉和深度学习在物体的检测和分类中起着至关重要的作用。提出的系统引入了一种基于深度学习的自动化方法来识别和分类肾洞。提出的工作是使用当前最先进的更快的RCNN模型Inception v2和MobileNet v2进行对象检测和分类。使用Tensorflow来评估Inception和MobileNet在不同数量的训练图像下的性能。盗梦空间的平均精度超过75%,而MobileNet的平均精度为64%。结果显示了Inception和MobileNet检测的比较,以及真阳性和假阳性检测以及未检测到的洞穴的计算。
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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