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Object recognition in clutter color images using Hierarchical Temporal Memory combined with salient-region detection

机译:分层时间记忆与显着区域检测相结合的杂波彩色图像中的目标识别

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The essential goal of this paper is to extend the functionality of the bio-inspired intelligent HTM (Hierarchical Temporal Memory) network towards two capabilities: (i) object recognition in color images, (ii) detection of multiple objects located in clutter color images. The former extension is based on the development of a novel scheme for the application of three parallel HTM networks that separately process color, texture, and shape information in color images. For the latter HTM extension, we propose a novel system in which HTM is combined with a modified model of computational visual attention. We adopt the results of Bi et al. (2010), Hu et al. (2005), and Kucerova (2011) and add new elements for the calculation of image saliency maps. The proposed algorithm enables one to automatically locate individual objects in clutter images. For computer experiments, a special image database is created to simulate ideal single object images and cluttered images with multiple objects on an inhomogeneous background. The recognition performance of HTM alone and in combination with the salient-region detection method is evaluated. We show that the attention subsystem is able to satisfactorily locate multiple objects in clutter color images with an inhomogeneous background. We also perform benchmark calculations for two selected computer vision methods used for object detection in color clutter images. Namely, the cascade detector and template matching methods are used. Our study confirms that the proposed attention system can improve the capabilities of HTM for object classification in cluttered images. The compound system of visual attention and HTM outperforms the compared methods in both criteria (recall and correct detection rate). However, as expected, the system cannot match the recognition accuracy achieved by HTM for single object images, and thus, further research is needed. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文的基本目标是将受生物启发的智能HTM(分层时间记忆)网络的功能扩展为两种功能:(i)彩色图像中的对象识别,(ii)检测位于混乱彩色图像中的多个对象。前一个扩展是基于一种新颖方案的开发,该方案适用于三个并行HTM网络的应用,这些网络分别处理彩色图像中的颜色,纹理和形状信息。对于后面的HTM扩展,我们提出了一个新颖的系统,其中HTM与计算的视觉注意力的修改模型结合在一起。我们采用Bi等人的结果。 (2010),Hu等。 (2005)和Kucerova(2011),并添加了用于计算图像显着性图的新元素。所提出的算法使人们能够自动在杂波图像中定位单个对象。对于计算机实验,将创建一个特殊的图像数据库来模拟理想的单个对象图像以及在不均匀背景上具有多个对象的混乱图像。评估了单独的HTM以及结合显着区域检测方法的HTM识别性能。我们显示出注意力子系统能够令人满意地在背景不均匀的杂色彩色图像中定位多个对象。我们还对用于彩色杂波图像中目标检测的两种选定的计算机视觉方法执行基准计算。即,使用了级联检测器和模板匹配方法。我们的研究证实,所提出的注意力系统可以提高HTM在混乱图像中进行对象分类的能力。视觉注意力和HTM的复合系统在两个标准(召回率和正确检测率)方面均优于比较方法。但是,正如预期的那样,该系统无法匹配HTM对单个物体图像实现的识别精度,因此,需要进行进一步的研究。 (C)2018 Elsevier B.V.保留所有权利。

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