Learning Invariance Manifolds of Visual Sensory Neurons

被引:0
作者
Baroni, Luca [1 ]
Bashiri, Mohammad [2 ]
Willeke, Konstantin F. [2 ]
Antolik, Jan [1 ]
Sinz, Fabian H. [2 ,3 ]
机构
[1] Charles Univ Prague, Fac Math & Phys, Prague, Czech Republic
[2] Univ Tubingen, Inst Bioinformat & Med Informat, Tubingen, Germany
[3] Univ Gottingen, Campus Inst Data Sci, Gottingen, Germany
来源
NEURIPS WORKSHOP ON SYMMETRY AND GEOMETRY IN NEURAL REPRESENTATIONS, VOL 197 | 2022年 / 197卷
关键词
neural invariances; invariance manifold; MEI; disentanglement; contrastive learning; visual cortex; CPPN; MODELS; FIELDS;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Robust object recognition is thought to rely on neural mechanisms that are selective to complex stimulus features while being invariant to others (e.g., spatial location or orientation). To better understand biological vision, it is thus crucial to characterize which features neurons in different visual areas are selective or invariant to. In the past, invariances have commonly been identified by presenting carefully selected hypothesis-driven stimuli which rely on the intuition of the researcher. One example is the discovery of phase invariance in V1 complex cells. However, to identify novel invariances, a data-driven approach is more desirable. Here, we present a method that, combined with a predictive model of neural responses, learns a manifold in the stimulus space along which a target neuron's response is invariant. Our approach is fully data-driven, allowing the discovery of novel neural invariances, and enables scientists to generate and experiment with novel stimuli along the invariance manifold. We test our method on Gabor-based neuron models as well as on a neural network fitted on macaque V1 responses and show that 1) it successfully identifies neural invariances, and 2) disentangles invariant directions in the stimulus space
引用
收藏
页码:301 / 326
页数:26
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