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Deep learning application: rubbish classification with aid of an android device

机译:深度学习应用:借助Android设备垃圾分类

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Deep learning is a very hot topic currently in pattern recognition and artificial intelligence researches. Aiming at the practical problem that people usually don't know correct classifications some rubbish should belong to, based on the powerful image classification ability of the deep learning method, we have designed a prototype system to help users to classify kinds of rubbish. Firstly the CaffeNet Model was adopted for our classification network training on the ImageNet dataset, and the trained network was deployed on a web server. Secondly an android app was developed for users to capture images of unclassified rubbish, upload images to the web server for analyzing backstage and retrieve the feedback, so that users can obtain the classification guide by an android device conveniently. Tests on our prototype system of rubbish classification show that: an image of one single type of rubbish with origin shape can be better used to judge its classification, while an image containing kinds of rubbish or rubbish with changed shape may fail to help users to decide rubbish's classification. However, the system still shows promising auxiliary function for rubbish classification if the network training strategy can be optimized further.
机译:深度学习是目前在模式识别和人工智能研究中的一个非常热门话题。针对人们通常不了解正确分类的实际问题,一些垃圾应该属于,基于强大的图像分类能力的深度学习方法,我们设计了一个原型系统,帮助用户分类种类的垃圾。首先,Caffenet模型是在想象网数据集上的分类网络训练中采用,培训的网络部署在Web服务器上。其次,开发了一个Android应用程序,为用户开发了捕获未分类的垃圾图像,将图像上传到Web服务器以分析BackStage并检索反馈,以便用户可以方便地通过Android设备获取分类指南。测试对垃圾分类的原型系统显示:一种单一类型的垃圾带有原点形状的图像可以更好地用于判断其分类,而包含种类的垃圾或具有改变形状的垃圾的图像可能无法帮助用户决定垃圾的分类。然而,如果网络训练策略可以进一步优化网络培训策略,该系统仍然显示有希望的垃圾分类辅助功能。

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