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Automatic Fish Species Classification Based on Robust Feature Extraction Techniques and Artificial Immune Systems

机译:基于鲁棒特征提取技术和人工免疫系统的自动鱼类分类

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This paper addresses the problem of automatic classification of fish species, by using image analysis techniques and artificial immune systems. Unlike most common methodologies, which are based on manual estimations that lead to significant time and financial constraints, we present an automatic framework based on (i) two well-known robust feature extraction techniques: Scale-Invariant Feature Transform and Principal Component Analysis for parameterizing shape, appearance and motion, (ii) two immunological algorithms: Artificial Immune Network and Adaptive Radius Immune Algorithm for clustering individuals of the same species, and (iii) a simple nearest neighbor classification strategy. The framework was successfully validated with images of fish species that have significant economic impact, achieving overall accuracy as high as 92%.
机译:本文通过使用图像分析技术和人工免疫系统解决了鱼类自动分类的问题。与大多数常见方法不同,这是基于手动估计,这导致了重要的时间和财务限制,我们提出了一种基于(i)两个众所周知的强大特征提取技术的自动框架:比例不变的功能变换和参数化的主成分分析形状,外观和运动,(ii)两种免疫算法:用于聚类相同物种的人工免疫网络和自适应半径免疫算法,以及(iii)简单的最近邻分类策略。该框架已成功验证,具有具有显着经济影响的鱼类图像,实现高达92%的整体准确性。

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