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Automatic scallop detection in benthic environments

机译:底栖环境中的自动扇贝检测

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As a multi-billion dollar industry, scallop fisheries world-wide rely on maintaining healthy off-shore populations. Recent developments in the collection of optical images from extended areas of the ocean floor has opened the possibility of assessing scallop populations from imagery. The shear volume of data — upwards of 20,000 images per hour — implies that automatic image analysis is necessary. This paper presents a computer vision software system to identify and count scallops. For each image, the system generates initial candidate regions of potential scallops, extracts image features in the candidate regions, and then applies one of several different trained Adaboost classifiers to determine the strength of each region as a scallop. In making the final classification decision, the strength of the scallop classifier output is compared to the output of other classifiers trained to detect sand dollars, clams and other “distractors”.
机译:作为数十亿美元的产业,全世界的扇贝渔业都依靠维持健康的近海种群。从海底扩展区域收集光学图像的最新进展为从图像评估扇贝种群提供了可能。数据的剪切量(每小时超过20,000张图像)意味着必须进行自动图像分析。本文提出了一种用于识别和计数扇贝的计算机视觉软件系统。对于每个图像,系统都会生成潜在扇贝的初始候选区域,在候选区域中提取图像特征,然后应用几种不同的经过训练的Adaboost分类器之一来确定每个区域的强度,从而形成扇贝。在做出最终分类决策时,将扇贝分类器输出的强度与经过训练可检测沙钱,蛤lam和其他“干扰物”的其他分类器的输出进行比较。

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