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Visual recognition incorporating features of self-supervised models for the use of unlabelled data

机译:可视识别结合了自我监督模型的功能,用于使用未标记的数据

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Automatic visual object recognition has gained great popularity in the world and is successfully applied to various areas such as robotics, security or commerce using deep learning techniques. Training in machine learning models based on deep learning requires an enormous amount of supervised data, which is expensive to obtain. An alternative is to use semi-supervised models as co-training where the views given by deep networks are differentiated using models that incorporate lateral information from each training object. In this document, we describe and test a co-training model for deep networks, adding as auxiliary inputs to self-supervised network features. The results show that the proposed model managed to converge using a few dozen iterations, exceeding 2 % in precision compared to recent models. This model, despite its simplicity, manages to be competitive with more complex recent works. As future work, we plan to modify deep self-supervised networks to increase diversity in co-training learning.
机译:自动视觉对象识别在世界上获得了很大的普及,并成功地应用于使用深层学习技术的机器人,安全或商业等各个领域。基于深度学习的机器学习模型培训需要大量的监督数据,这是昂贵的。另一种方法是使用半监督模型作为共同训练,其中深网络给出的视图使用包含来自每个训练对象的横向信息的模型来区分。在本文档中,我们描述并测试了深网络的共同培训模型,添加为自我监督网络功能的辅助输入。结果表明,与最近的模型相比,所提出的模型达到了几十个迭代,超过了2%的精确度。此模型尽管其简单性,但竞争更复杂的最近作品的竞争力。作为未来的工作,我们计划修改深度自我监督网络,以提高共同培训学习的多样性。

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