确定鱼类分类任务的适当特征集

M. S. Nery, A.M.C. Machado, M. Campos, F. Pádua, R. Carceroni, J. P. Queiroz-Neto
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引用次数: 48

摘要

我们提出了一种新的基于鲁棒特征选择技术的鱼类分类方法。与现有的鱼类分类工作不同,这些工作提出了描述符,但没有分析它们在整个分类任务中的单个影响,我们提出了一组通用的特征及其相应的权重,这些特征和权重应被分类器用作先验信息。从这个意义上说,我们不是研究改进分类器结构本身的技术,而是将其视为一个“黑匣子”,并将我们的研究重点放在确定哪些输入信息必须带来稳健的鱼类识别上。所有实验均以巴西米纳斯吉拉斯州里奥格兰德河的鱼类为研究对象。这项工作是一项更广泛的研究[3]的一部分,该研究的主要目标是为巴西水坝开发有效的鱼梯。
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Determining the Appropriate Feature Set for Fish Classification Tasks
We present a novel fish classification methodology based on a robust feature selection technique. Unlike existing works for fish classification, which propose descriptors and do not analyze their individual impacts in the whole classification task, we propose a general set of features and their correspondent weights that should be used as a priori information by the classifier. In this sense, instead of studying techniques for improving the classifiers structure itself, we consider it as a "black box" and focus our research in the determination of which input information must bring a robust fish discrimination. All the experiments were performed with fish species of Rio Grande river in Minas Gerais, Brazil. This work has been developed as part of a wider research [3], which has as main goal the development of effective fish ladders for the Brazilian dams.
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