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Towards Visual Concept Learning and Reasoning: On Insights into Representative Approaches

机译:朝着视觉概念学习和推理:关于代表方法的见解

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The study of visual concept learning methodologies has been developed over the last years, becoming the state-of-the art research that challenges the reasoning capabilities of deep learning methods. In this paper we discuss the evolution of those methods, starting from the cap-tioning approaches that prepared the transition to current cutting-edge visual question answering systems. The emergence of specially designed datasets, distilled from visual complexity, but with properties and divisions that challenge abstract reasoning and generalization capabilities, encourages the development of AI systems that will support them by design. Explainability of the decision making process of AI systems, either built-in or as a by-product of the acquired reasoning capabilities, underpins the understanding of those systems robustness, their underlying logic and their improvement potential.
机译:在过去几年中,对视觉概念学习方法的研究已经发展成为最先进的研究,挑战深度学习方法的推理能力。 在本文中,我们讨论了这些方法的演变,从提交到当前尖端视觉问题应答系统的过渡的章节缩义方法开始。 特殊设计的数据集的出现,从视觉复杂性蒸馏,但具有挑战摘要推理和泛化能力的性质和部门,鼓励开发通过设计支持它们的AI系统。 解释AI系统的决策过程,内置或作为获取的推理能力的副产物,支持对这些系统的鲁棒性,其潜在的逻辑及其改善潜力的理解。

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