FUSIONET: A Hybrid Model Towards Image Classification

Molokwu C. Reginald, Molokwu C. Bonaventure, Molokwu C. Victor, Okeke C. Ogochukwu
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引用次数: 1

Abstract

Image classification, a topic of pattern recognition in computer vision, is an approach of classification based on contextual information in images. Contextual here means this approach is focusing on the relationship of the nearby pixels also called neighborhood. An open topic of research in computer vision is to devise an effective means of transferring human’s informal knowledge into computers, such that computers can also perceive their environment. However, the occurrence of object with respect to image representation is usually associated with various features of variation causing noise in the image representation. Hence, it tends to be very difficult to actually disentangle these abstract factors of influence from the principal object. In this paper, we have proposed a hybrid model: FUSIONET, which has been modeled for studying and extracting meaning facts from images. Our proposition combines two distinct stack of convolution operation (3 × 3 and 1 × 1, respectively). Successively, these relatively low-feature maps from the above operation are fed as input to a downstream classifier for classification of the image in question.
一种用于图像分类的混合模型
图像分类是一种基于图像上下文信息的分类方法,是计算机视觉中模式识别的一个研究课题。上下文在这里意味着这种方法关注的是附近像素之间的关系,也称为邻域。计算机视觉研究的一个开放课题是设计一种有效的方法,将人类的非正式知识转移到计算机中,使计算机也能感知他们的环境。然而,物体在图像表示方面的出现通常与图像表示中引起噪声的各种变化特征有关。因此,实际上很难将这些抽象的影响因素与主要对象分开。在本文中,我们提出了一种混合模型:FUSIONET,该模型用于从图像中学习和提取意义事实。我们的命题结合了两个不同的卷积操作堆栈(分别为3 × 3和1 × 1)。随后,这些来自上述操作的相对低特征映射作为输入馈送到下游分类器,用于对所讨论的图像进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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