Object-Centric Concept-Bottlenecks
–Neural Information Processing Systems
Developing high-performing, yet interpretable models remains a critical challenge in modern AI. Concept-based models (CBMs) attempt to address this by extracting human-understandable concepts from a global encoding (e.g., image encoding) and then applying a linear classifier on the resulting concept activations, enabling transparent decision-making. However, their reliance on holistic image encodings limits their expressiveness in object-centric real-world settings and thus hinders their ability to solve complex vision tasks beyond single-label classification. To tackle these challenges, we introduce Object-Centric Concept Bottlenecks (OCB), a framework that combines the strengths of CBMs and pre-trained object-centric foundation models, boosting performance and interpretability. We evaluate OCB on complex image datasets and conduct a comprehensive ablation study to analyze key components of the framework, such as strategies for aggregating object-concept encodings. The results show that OCB outperforms traditional CBMs and allows one to make interpretable decisions for complex visual tasks.
Neural Information Processing Systems
Jun-17-2026, 20:49:11 GMT
- Genre:
- Research Report
- New Finding (1.00)
- Experimental Study (1.00)
- Research Report
- Technology:
- Information Technology
- Sensing and Signal Processing > Image Processing (0.93)
- Artificial Intelligence
- Vision (1.00)
- Natural Language > Large Language Model (0.46)
- Representation & Reasoning > Object-Oriented Architecture (0.46)
- Cognitive Science > Problem Solving (0.46)
- Machine Learning
- Neural Networks (0.46)
- Performance Analysis (0.46)
- Statistical Learning (0.34)
- Information Technology