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ONLINE, INCREMENTAL REAL-TIME LEARNING FOR TAGGING AND LABELING DATA STREAMS FOR DEEP NEURAL NETWORKS AND NEURAL NETWORK APPLICATIONS

机译:用于深度神经网络和神经网络应用的标记和标签数据流的在线,增量实时学习

摘要

Today, artificial neural networks are trained on large sets of manually tagged images. Generally, for better training, the training data should be as large as possible. Unfortunately, manually tagging images is time consuming and susceptible to error, making it difficult to produce the large sets of tagged data used to train artificial neural networks. To address this problem, the inventors have developed a smart tagging utility that uses a feature extraction unit and a fast-learning classifier to learn tags and tag images automatically, reducing the time to tag large sets of data. The feature extraction unit and fast-learning classifiers can be implemented as artificial neural networks that associate a label with features extracted from an image and tag similar features from the image or other images with the same label. Moreover, the smart tagging system can learn from user adjustment to its proposed tagging. This reduces tagging time and errors.
机译:如今,人工神经网络已在大量手动标记图像上进行训练。通常,为了获得更好的培训,培训数据应尽可能大。不幸的是,手动标记图像非常耗时且容易出错,从而难以生成用于训练人工神经网络的大量标记数据。为了解决这个问题,发明人已经开发了一种智能标记实用程序,其使用特征提取单元和快速学习分类器来自动学习标记和标记图像,从而减少了标记大型数据集的时间。特征提取单元和快速学习分类器可以被实现为人工神经网络,其将标签与从图像中提取的特征相关联,并标记来自图像或具有相同标签的其他图像中的相似特征。此外,智能标记系统可以从用户对其建议的标记的调整中学习。这样可以减少标记时间和错误。

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