Learning from Pattern Completion: Self-supervised Controllable Generation
Zhiqiang Chen, Guofan Fan, Jinying Gao, Lei Ma, Bo Lei, Tiejun Huang,, Shan Yu

TL;DR
This paper introduces a self-supervised controllable generation framework inspired by brain mechanisms, achieving functional specialization and associative generation without annotated datasets, outperforming existing methods like ControlNet.
Contribution
The paper proposes a novel self-supervised controllable generation method using a modular autoencoder inspired by neural mechanisms, enabling scalable and robust image generation.
Findings
Effective modular autoencoder achieves functional specialization.
Emergence of brain-like features such as orientation selectivity.
Superior robustness and scalability compared to ControlNet.
Abstract
The human brain exhibits a strong ability to spontaneously associate different visual attributes of the same or similar visual scene, such as associating sketches and graffiti with real-world visual objects, usually without supervising information. In contrast, in the field of artificial intelligence, controllable generation methods like ControlNet heavily rely on annotated training datasets such as depth maps, semantic segmentation maps, and poses, which limits the method's scalability. Inspired by the neural mechanisms that may contribute to the brain's associative power, specifically the cortical modularization and hippocampal pattern completion, here we propose a self-supervised controllable generation (SCG) framework. Firstly, we introduce an equivariant constraint to promote inter-module independence and intra-module correlation in a modular autoencoder network, thereby achieving…
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Taxonomy
TopicsEvolutionary Algorithms and Applications · Fuzzy Logic and Control Systems · AI-based Problem Solving and Planning
