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Deep Learning Based Image Segmantation and Classification for Fashion Detection on Smartphones

机译:基于深度学习的智能手机时尚检测的图像分割和分类

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With the rapid increase in smartphone technologies and social media applications, photo sharing among people has become widespread. Most of the photos shared include the clothes people use in daily life. Access to desired clothes is easier with online facilities. Identifying the outfit in a photograph is the first step to this. In this study, an original system with deep learning based segmentation and classification methods aiming at detecting the clothes used in daily life via smart phone is proposed. The image taken with a smartphone camera was segmented first, and the clothing boundaries in the image were determined and tagged for classification. The labeled image was trained with the convolutional neural network and the category to which the garment belongs was determined. Using different models in the segmentation part, the highest accuracy was obtained in the mask regional convolutional neural network on the DeepFashion2 da taset. In the classification part, the Xception architecture showed superiority in the trainings made with different convolutional neural networks. The models with the highest accuracy rate are combined with our Android application called Clothes Detection, which we developed to detect clothes. Thanks to our user-friendly application that has been developed, clothes can be detected on the photograph.
机译:随着智能手机技术和社交媒体应用的快速增加,人们之间的照片分享已经普遍存在。共享的大多数照片包括人们在日常生活中使用的衣服。在线设施可以获得所需的衣服。识别照片中的装备是迈向的第一步。在本研究中,提出了一种基于深度学习的细分和分类方法的原始系统,旨在通过智能手机检测日常生活中使用的衣服。用智能手机相机拍摄的图像首先进行分段,并确定图像中的衣服边界并标记分类。标记的图像用卷积神经网络培训,确定了服装所属的类别。在分割部分中使用不同的模型,在DeepFashion2DA Taset上的掩模区域卷积神经网络中获得了最高精度。在分类部分中,Xcepion架构在用不同的卷积神经网络制作的培训中显示出优越性。具有最高精度率的模型与我们的Android应用程序相结合,称为衣服检测,我们开发出衣服。由于我们开发的用户友好的应用程序,可以在照片上检测到衣服。

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