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  • title: PTR: A Benchmark for ParT-based Conceptual, Relational, and Physical Reasoning
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            PTR: A Benchmark for ParT-based Conceptual, Relational, and Physical Reasoning
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            PTR: A Benchmark for ParT-based Conceptual, Relational, and Physical Reasoning

            Dec 6, 2021

            Speakers

            YH

            Yining Hong

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            LY

            Li Yi

            Speaker · 0 followers

            JBT

            Josh B. Tenenbaum

            Speaker · 14 followers

            About

            A critical aspect of human visual perception is the ability to parse visual scenes into individual objects and further into object parts, forming part-whole hierarchies. Such composite structures could induce a rich set of semantic concepts and relations, thus playing an important role in the interpretation and organization of visual signals as well as for the generalization of visual perception and reasoning. However, existing visual reasoning benchmarks mostly focus on objects rather than part…

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            NeurIPS 2021

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