An efficient framework for classifying the Clothing items based on fashion and fabric of the images

S. Nandyal, Nikhil S Tengli
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Abstract

In recent days classification of images over fashion domain has become fundamental research problem with lot of computer vision based applications. In most of the existing research image classification is done based on the labels on the objects, however in the real world scenarios the images needs to classified into the labels based on the domain specific with proper guidelines, therefore the existing research works fails in achieving the evaluation measures like classification accuracy, precision, recall and time take taken for classification, Hence there is need of an efficient frameworks that classifies the images based on fashion and fabric by addressing existing research problems. This paper presents an efficient framework for segmenting using grab cut techniques with the integrating the histograms of oriented gradients (HOG) and the speeded-up robust features (SURF) techniques. Whereas HOG technique is used to retrieve the global features and SURF technique is used for the local features and then segmentation is done based on Scale-Invariant Feature Transform(SIFT) method that segments the line, solve the incident scaling, changes in lighting condition and rotation between the two images, Later classification of the clothing images is done by using feature matching classification techniques, with proper text analysis the classification of images is done based on color and fabric of the image. The proposed technique is compared with existing multi-level classification technique to prove the proposed framework is more efficient than existing works. With the proposed technique, we could able to achieve the accuracy of 93% by varying the dataset of the images which is 10–15% more accurate than existing multi-level classification.
基于图像的时尚和面料对服装进行分类的有效框架
近年来,服装领域的图像分类已成为基于计算机视觉的许多应用的基础研究问题。在现有的研究中,大多数图像分类都是基于物体上的标签进行的,而在现实场景中,图像需要根据特定的领域进行分类,并有适当的指导方针,因此现有的研究工作无法实现分类准确率、精度、召回率和分类时间等评价指标。因此,通过解决现有的研究问题,需要一个有效的基于时尚和面料的图像分类框架。本文提出了一种利用定向梯度直方图(HOG)和加速鲁棒特征(SURF)相结合的抓取切割技术进行分割的有效框架。采用HOG技术提取全局特征,SURF技术提取局部特征,然后基于尺度不变特征变换(SIFT)方法分割线条,解决两幅图像之间的事件缩放、光照条件变化和旋转等问题,然后采用特征匹配分类技术对服装图像进行分类。通过适当的文本分析,根据图像的颜色和结构对图像进行分类。将该方法与现有的多级分类技术进行了比较,证明了该方法的有效性。利用本文提出的技术,通过改变图像的数据集,我们可以达到93%的准确率,比现有的多级分类准确率提高10-15%。
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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