Indoor and outdoor image classification

IF 0.8 Q4 ROBOTICS
Rajasekar Velswamy, Sorna Chandra Devadass, Karunakaran Velswamy, Jeyakrishnan Venugopal
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引用次数: 1

Abstract

Purpose The purpose of this paper is to classify the given image as indoor or outdoor with higher success rate by mixing various features like brightness, number of straight lines, number of Euclidean shapes and recursive shapes. Design/methodology/approach For annotating an image, it is very easy, if the image is categorized as indoor or outdoor. Many methods are proposed to classify the given image in these criteria but still the rate of uncategorized images occupies considerable area. This proposed work is the extension of the existing works already proposed by experts in this field. Some of the parameters mainly focused to classify are color histogram, orientation of edges, straightness of edges, discrete cosine transform coefficients, etc. In addition to that, this work includes finding of Euclidean shapes i.e. closed contours and recursive shapes in the given image. When the Euclidean shaped object dominates the recursive shapes then it is classified as indoor object and if the recursive shapes dominates, it is categorized as outdoor object. Findings This work is carried out on the standard image data sets. The data sets are Microsoft Research Cambridge (MRC) object recognition image database 1.0. and Kodak and Coral image data set. Totally 540 images are taken into account and the images are classified 95.4 percent correctly. Originality/value Many methods are proposed to classify the given image in these criteria but still the rate of uncategorized images occupies considerable area. This proposed work is the extension of the existing works already proposed by experts in this field. Some of the parameters mainly focused to classify are color histogram, orientation of edges, straightness of edges, discrete cosine transform coefficients, etc. In addition to that, this work includes finding of Euclidean shapes i.e. closed contours and recursive shapes in the given image. When the Euclidean shaped object dominates the recursive shapes then it is classified as indoor object and if the recursive shapes dominates, it is categorized as outdoor object. This work is carried out on the standard image data sets. The data sets are MRC object recognition image database 1.0. and Kodak and Coral image data set. Totally 540 images are taken into account and the images are classified 95.4 percent correctly.
室内外图像分类
目的通过混合亮度、直线数、欧几里得形状数和递归形状等各种特征,将给定的图像分类为成功率较高的室内或室外图像。设计/方法/方法如果图像被归类为室内或室外,那么对图像进行注释是非常容易的。在这些标准中,提出了许多方法来对给定的图像进行分类,但未分类图像的比率仍然占据相当大的区域。这项拟议工作是该领域专家已经提出的现有工作的延伸。主要用于分类的一些参数是颜色直方图、边缘方向、边缘直线度、离散余弦变换系数等。除此之外,这项工作还包括在给定图像中寻找欧几里得形状,即闭合轮廓和递归形状。当欧几里得形状的物体主导递归形状时,它被归类为室内物体,如果递归形状主导,它被分类为室外物体。查找这项工作是在标准图像数据集上进行的。数据集是微软剑桥研究中心(MRC)的对象识别图像数据库1.0。以及Kodak和Coral图像数据集。共考虑了540幅图像,图像分类正确率为95.4%。原创性/价值在这些标准中,提出了许多方法来对给定的图像进行分类,但未分类图像的比率仍然占据了相当大的面积。这项拟议工作是该领域专家已经提出的现有工作的延伸。主要用于分类的一些参数是颜色直方图、边缘方向、边缘直线度、离散余弦变换系数等。除此之外,这项工作还包括在给定图像中寻找欧几里得形状,即闭合轮廓和递归形状。当欧几里得形状的物体主导递归形状时,它被归类为室内物体,如果递归形状主导,它被分类为室外物体。这项工作是在标准图像数据集上进行的。数据集是MRC对象识别图像数据库1.0。以及Kodak和Coral图像数据集。共考虑了540幅图像,图像分类正确率为95.4%。
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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