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Fast Learning for Accurate Object Recognition Using a Pre-trained Deep Neural Network

机译:使用预先训练的深神经网络快速学习准确对象识别

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Object recognition is a relevant task for many areas and, in particular, for service robots. Recently object recognition has been dominated by the use of Deep Neural Networks (DNN), however, they required a large number of images and long training times. If a user asks a service robot to search for an unknown object, it has to deal with selecting relevant images to learn a model, deal with polysemy, and learn a model relatively quickly to be of any use to the user. In this paper we describe an object recognition system that deals with the above challenges by: (i) a user interface to reduce different object interpretations, (ii) downloading on-the-fly images from Internet to train a model, and (iii) using the outputs of a trimmed pre-trained DNN as attributes for a SVM. The whole process (selecting and downloading images and training a model) of learning a model for an unknown object takes around two minutes. The proposed method was tested on 72 common objects found in a house environment with very high precision and recall rates (over 90%).
机译:目标识别是许多地区的相关任务,特别是,服务机器人。近来物体识别已经通过使用深层神经网络(DNN)的支配,然而,他们需要大量的图像和长的训练时间。如果用户要求服务机器人搜索不明物体,它具有处理选择相关图像,以学习的楷模,处理一词多义,和学习的楷模比较快是任何使用用户。在本文中,我们描述一个物体识别系统,通过上述挑战涉及:(I)的用户界面,以减少不同对象的解释,(二)下载的即时图片来自互联网来训练模型,以及(iii)使用预训练的修剪DNN的输出作为用于SVM属性。学习模型不明物体的全过程(选择和下载图像和训练模式)大约需要两分钟。所提出的方法是在72名共同对象测试在一所房子的环境中发现具有非常高的精确度和召回率(超过90%)。

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