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An Early Underwater Artificial Vision Model in Ocean Investigations via Independent Component Analysis

机译:基于独立分量分析的海洋研究中的早期水下人工视觉模型

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摘要

Underwater vision is one of the dominant senses and has shown great prospects in ocean investigations. In this paper, a hierarchical Independent Component Analysis (ICA) framework has been established to explore and understand the functional roles of the higher order statistical structures towards the visual stimulus in the underwater artificial vision system. The model is inspired by characteristics such as the modality, the redundancy reduction, the sparseness and the independence in the early human vision system, which seems to respectively capture the Gabor-like basis functions, the shape contours or the complicated textures in the multiple layer implementations. The simulation results have shown good performance in the effectiveness and the consistence of the approach proposed for the underwater images collected by autonomous underwater vehicles (AUVs).
机译:水下视觉是主要的感觉之一,并且在海洋研究中显示了广阔的前景。在本文中,建立了分层的独立成分分析(ICA)框架,以探索和理解高阶统计结构对水下人工视觉系统中视觉刺激的功能作用。该模型的灵感来自于早期人类视觉系统中的模态,冗余减少,稀疏性和独立性等特征,这些特征似乎分别捕获了多层的Gabor类基础函数,形状轮廓或复杂纹理实现。仿真结果表明,该方法对于自动水下航行器(AUV)收集的水下图像的有效性和一致性是很好的。

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