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Look before we leap: reinforced active sampling framework for image classification

机译:飞跃之前先看一下:用于图像分类的增强型主动采样框架

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We aim to improve the negative-accelerated sampling framework and construct a more reasonable and effective active sampling framework by introducing the technique of reinforcement learning. Compared with traditional uncertainty-based active sampling strategy, the proposed sample selection framework consists of both a certainty metric and sample postprocessing for more precise evaluation. The certainty metric is measured by the visual classifying model, and the postprocessing module is implemented by the Q-learning algorithm to construct a compact training set for the visual module to further improve the effectiveness and efficiency of classification. Meanwhile, the parameters of the whole sampling framework are calculated adaptively instead of being set manually to improve the adaptiveness of the whole framework. Experimental results on real-world datasets show the effectiveness of the proposed framework. (C) 2018 SPIE and IS&T
机译:我们的目的是通过引入强化学习技术来改进负加速采样框架,并构建更合理和有效的主动采样框架。与传统的基于不确定性的主动采样策略相比,所提出的样本选择框架包括确定性度量和样本后处理,以进行更精确的评估。通过视觉分类模型测量确定性度量,通过Q学习算法实现后处理模块,为视觉模块构造紧凑的训练集,进一步提高分类的有效性和效率。同时,整个采样框架的参数是自适应计算的,而不是手动设置的,以提高整个框架的自适应性。在真实数据集上的实验结果表明了该框架的有效性。 (C)2018 SPIE和IS&T

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