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An incremental intelligent object recognition system based on deep learning

机译:基于深度学习的增量式智能目标识别系统

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The accuracy of object recognition has been greatly improved due to the rapid development of deep learning, but the deep learning generally requires a lot of training data and the training process is very slow and complex. We propose an incremental object recognition system based on deep learning techniques and speech recognition technology with high learning speed and wide applicability. The system can learn from scratch through the way of human-computer interaction. Through the interaction of user, the system continues to improve its identification ability by updating or adding object's feature templates gradually. The types of objects that it can be identified become more and more, and recognition rate is also getting high increasingly. The GoogLeNet inception v4 network is used to extract the object features. Then the object is classified based on the extracted features by measuring the similarity between the object and its template. Experiments show that our system can identify the object accurately after the system learns about ten samples of this object. The self-learning system has a wide range of applicability and flexibility because of the incremental frame based on deep learning.
机译:由于深度学习的快速发展,物体识别的准确性得到了极大的提高,但是深度学习通常需要大量的训练数据,并且训练过程非常缓慢和复杂。我们提出了一种基于深度学习技术和语音识别技术的增量目标识别系统,该系统具有较高的学习速度和广泛的适用性。该系统可以通过人机交互的方式从头开始学习。通过用户的交互,系统通过逐步更新或添加对象的特征模板来不断提高其识别能力。可以识别的物体种类越来越多,识别率也越来越高。 GoogLeNet初始v4网络用于提取对象特征。然后,通过测量对象及其模板之间的相似度,基于提取的特征对对象进行分类。实验表明,系统学习到该对象的十个样本后,就可以准确识别出该对象。由于基于深度学习的增量框架,因此自学习系统具有广泛的适用性和灵活性。

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