Litcius/Paper detail

Act the Part: Learning Interaction Strategies for Articulated Object Part Discovery

Samir Yitzhak Gadre, Kiana Ehsani, Shuran Song

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)35 citationsDOI

Abstract

People often use physical intuition when manipulating articulated objects, irrespective of object semantics. Motivated by this observation, we identify an important embodied task where an agent must play with objects to recover their parts. To this end, we introduce Act the Part (AtP) to learn how to interact with articulated objects to discover and segment their pieces. By coupling action selection and motion segmentation, AtP is able to isolate structures to make perceptual part recovery possible without semantic labels. Our experiments show AtP learns efficient strategies for part discovery, can generalize to unseen categories, and is capable of conditional reasoning for the task. Although trained in simulation, we show convincing transfer to real world data with no fine-tuning. A summery video, interactive demo, and code will be available at https://atp.cs.columbia.edu.

Topics & Concepts

IntuitionComputer scienceEmbodied cognitionSegmentationArtificial intelligencePerceptionTask (project management)Object (grammar)Semantics (computer science)Selection (genetic algorithm)Code (set theory)Action (physics)Human–computer interactionCognitive scienceProgramming languageNeuroscienceEconomicsBiologyQuantum mechanicsSet (abstract data type)ManagementPhysicsPsychologyHuman Pose and Action RecognitionMultimodal Machine Learning ApplicationsHuman Motion and Animation