基于互信息最大化的增强脑启发人脸分类模型

Mohammad Jazlaeiyan, Sanaz Seyedin, S. A. Motamedi
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引用次数: 2

摘要

人类视觉系统可以在杂乱的自然场景中对复杂的物体进行简单、鲁棒的识别。到目前为止,已经开发了许多计算模型来模拟这个相当大的机器视觉系统的计算过程。HMAX是受人类视觉皮层层次结构启发而建立的最好的计算模型之一。在HMAX的学习阶段,在随机位置提取大量的训练图像的小部分,称为patch。这些补丁有不同的大小和方向。在基于hmax的目标识别系统中,补丁的随机选择不仅降低了性能,而且增加了计算复杂度。本文针对这一缺陷,提出了一种基于信息论的新方法来选择更相关的补丁并去除冗余的补丁。提出的方法是为人脸分类任务开发的,其目的是检测真实世界图像中人脸的存在或不存在。在人脸图像数据库CalTech101上对该方法的性能进行了评价,其识别率比原始HMAX提高了5%以上。
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Enhanced Brain Inspired Model for Face Categorization Using Mutual Information Maximization
Human visual system can robustly and simply recognize complex objects in cluttered natural scenes. So far, numerous computational models have been developed to mimic the computational process of this considerable system for machine vision systems. HMAX is known as one of the best computational models which have been inspired by hierarchical structure of the human visual cortex. During learning stage of the HMAX, a large number of small part of training images, called patches, are extracted at random positions. These patches are in various sizes and orientations. The random selection of patches, not only degrades the performance but also increases the computational complexity of HMAX-based object recognition systems. In this paper, we focus on this drawback and propose a new method based on information theory to select more relevant patches and remove redundant ones. The proposed method is developed for a face categorization task in which the purpose is to detect the presence or absence of faces in real world images. The performance of the proposed method has been evaluated on face image database CalTech101 and its recognition rate is superior to the original HMAX by more than 5%.
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