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Object recognition on satellite images with biologically-inspired computational approaches

机译:利用生物学启发的计​​算方法对卫星图像进行目标识别

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摘要

The human vision system is often significantly superior in extracting and interpreting visual information when compared to classical computer vision systems. The exploitation of existing knowledge about human perception is expected to improve the performance of computational vision systems. Computational visual attention has been reported to improve scene understanding performance. This paper discusses some of the difficulties faced by the current generation of visual attention systems when applied on satellite images. Next, a novel technique for top-down attention is devised which is based on the energy of bottom-up feature maps and overcomes some of the limitations of previous approaches. The computed top-down map is then used as a method of object localization in the object recognition phase that makes use of texture and shape information using local binary patterns, Legendre moments and Hu moment invariants. The proposed algorithm is shown to perform better than other similar systems on satellite images in many aspects.
机译:与传统的计算机视觉系统相比,人类视觉系统在提取和解释视觉信息方面通常具有明显的优势。利用有关人类感知的现有知识有望改善计算视觉系统的性能。已经报道了计算视觉注意力以改善场景理解性能。本文讨论了当前的视觉注意系统在应用于卫星图像时面临的一些困难。接下来,基于自底向上特征图的能量,设计了一种用于自上而下注意的新颖技术,并克服了先前方法的某些局限性。然后,将计算出的自上而下的映射用作对象识别阶段中的对象定位方法,该方法利用局部二进制模式,Legendre矩和Hu矩不变量来利用纹理和形状信息。在许多方面,该算法在卫星图像上的表现均优于其他类似系统。

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