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Large scale image understanding with non-convex multi-task learning

机译:通过非凸多任务学习进行大规模图像理解

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Large scale image understanding is drawing more and more attention from the researchers and industry. Inspired by the game theory and machine learning algorithm, this paper proposes a semantic dictionary to solve the key problem of visual polysemia and concept polymorphism in the large scale image understanding. The semantic dictionary characterizes the probability distribution between visual appearances and semantic concepts, and the learning of semantic dictionary is formulated into a minimization problem of the payoffs, where the players adjudge their strategies (i.e. the probability distribution) at each iteration. Non-convex multi-task learning is introduced to solve the above optimization problem. Finally, the wide applications of semantic dictionary are validated in our experiments, including the large scale semantic image search and image annotation.
机译:大规模的图像理解正在引起研究人员和行业的越来越多的关注。在博弈论和机器学习算法的启发下,提出了一种语义词典,以解决视觉多视症和概念多态性在大规模图像理解中的关键问题。语义词典表征了视觉外观和语义概念之间的概率分布,语义词典的学习被公式化为收益的最小化问题,在此问题中玩家在每次迭代时都决定其策略(即概率分布)。为了解决上述优化问题,引入了非凸多任务学习。最后,在我们的实验中验证了语义词典的广泛应用,包括大规模的语义图像搜索和图像标注。

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