Using compositionality to understand parts in whole objects

被引:4
作者
Arun, S. P. [1 ]
机构
[1] Indian Inst Sci, Ctr Neurosci, Bangalore 560012, Karnataka, India
基金
英国惠康基金;
关键词
holistic processing; object recognition; object vision; visual perception; RECEPTIVE-FIELDS; NEURAL CODE; SHAPE; PERCEPTION; CORTEX; FEATURES; REPRESENTATIONS; RECOGNITION; SIMILARITY; MONKEY;
D O I
10.1111/ejn.15746
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
A fundamental question for any visual system is whether its image representation can be understood in terms of its components. Decomposing any image into components is challenging because there are many possible decompositions with no common dictionary, and enumerating the components leads to a combinatorial explosion. Even in perception, many objects are readily seen as containing parts, but there are many exceptions. These exceptions include objects that are not perceived as containing parts, properties like symmetry that cannot be localized to any single part and special categories like words and faces whose perception is widely believed to be holistic. Here, I describe a novel approach we have used to address these issues and evaluate compositionality at the behavioural and neural levels. The key design principle is to create a large number of objects by combining a small number of pre-defined components in all possible ways. This allows for building component-based models that explain neural and behavioural responses to whole objects using a combination of these components. Importantly, any systematic error in model fits can be used to detect the presence of emergent or holistic properties. Using this approach, we have found that whole object representations are surprisingly predictable from their components, that some components are preferred to others in perception and that emergent properties can be discovered or explained using compositional models. Thus, compositionality is a powerful approach for understanding how whole objects relate to their parts.
引用
收藏
页码:4378 / 4392
页数:15
相关论文
共 50 条
  • [41] Using glycan microarrays to understand immunity
    Arthur, Connie M.
    Cummings, Richard D.
    Stowell, Sean R.
    CURRENT OPINION IN CHEMICAL BIOLOGY, 2014, 18 : 55 - 61
  • [42] Using robots to understand social behaviour
    Mitri, Sara
    Wischmann, Steffen
    Floreano, Dario
    Keller, Laurent
    BIOLOGICAL REVIEWS, 2013, 88 (01) : 31 - 39
  • [43] Using goal-driven deep learning models to understand sensory cortex
    Yamins, Daniel L. K.
    DiCarlo, James J.
    NATURE NEUROSCIENCE, 2016, 19 (03) : 356 - 365
  • [44] Using Psychophysical Methods to Understand Mechanisms of Face Identification in a Deep Neural Network
    Xu, Tian
    Garrod, Oliver
    Scholte, Steven H.
    Ince, Robin
    Schyns, Philippe G.
    PROCEEDINGS 2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS (CVPRW), 2018, : 2057 - 2065
  • [45] Using neuroscience to understand the impact of premium digital out-of-home media
    Andrew, Heather
    Haines, Helen
    Seixas, Shaun
    INTERNATIONAL JOURNAL OF MARKET RESEARCH, 2019, 61 (06) : 588 - 600
  • [46] The whole is equal to the sum of its parts: Pigeons (Columba livia) and crows (Corvus macrorhynchos) do not perceive emergent configurations
    Goto, Kazuhiro
    Watanabe, Shigeru
    LEARNING & BEHAVIOR, 2020, 48 (01) : 53 - 65
  • [47] Categorization of Multiple Objects in a Scene Using a Biased Sampling Strategy
    Yang, Lei
    Zheng, Nanning
    Chen, Mei
    Yang, Yang
    Yang, Jie
    INTERNATIONAL JOURNAL OF COMPUTER VISION, 2013, 105 (01) : 1 - 18
  • [48] The Whole Is More Than Its Parts? From Explicit to Implicit Pose Normalization
    Simon, Marcel
    Rodner, Erik
    Darrell, Trevor
    Denzler, Joachim
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2020, 42 (03) : 749 - 763
  • [49] Competition Between Parts and Whole: A New Approach to Chinese Compound Word Processing
    Zhang, Qiwei
    Huang, Kuan-Jung
    Li, Xingshan
    JOURNAL OF EXPERIMENTAL PSYCHOLOGY-HUMAN PERCEPTION AND PERFORMANCE, 2024, 50 (05) : 479 - 497
  • [50] Learning descriptive and distinctive parts of objects with a part-based shape similarity measure
    Lakämper, R
    Latecki, LJ
    Megalooikonomou, V
    Wang, Q
    Wang, XZ
    PROCEEDINGS OF THE SIXTH IASTED INTERNATIONAL CONFERENCE ON SIGNAL AND IMAGE PROCESSING, 2004, : 672 - 677