Paper List
-
MCP-AI: Protocol-Driven Intelligence Framework for Autonomous Reasoning in Healthcare
This paper addresses the critical gap in healthcare AI systems that lack contextual reasoning, long-term state management, and verifiable workflows by...
-
Model Gateway: Model Management Platform for Model-Driven Drug Discovery
This paper addresses the critical bottleneck of fragmented, ad-hoc model management in pharmaceutical research by providing a centralized, scalable ML...
-
Tree Thinking in the Genomic Era: Unifying Models Across Cells, Populations, and Species
This paper addresses the fragmentation of tree-based inference methods across biological scales by identifying shared algorithmic principles and stati...
-
SSDLabeler: Realistic semi-synthetic data generation for multi-label artifact classification in EEG
This paper addresses the core challenge of training robust multi-label EEG artifact classifiers by overcoming the scarcity and limited diversity of ma...
-
Decoding Selective Auditory Attention to Musical Elements in Ecologically Valid Music Listening
This paper addresses the core challenge of objectively quantifying listeners' selective attention to specific musical components (e.g., vocals, drums,...
-
Physics-Guided Surrogate Modeling for Machine Learning–Driven DLD Design Optimization
This paper addresses the core bottleneck of translating microfluidic DLD devices from research prototypes to clinical applications by replacing weeks-...
-
Mechanistic Interpretability of Antibody Language Models Using SAEs
This work addresses the core challenge of achieving both interpretability and controllable generation in domain-specific protein language models, spec...
-
Fluctuating Environments Favor Extreme Dormancy Strategies and Penalize Intermediate Ones
This paper addresses the core challenge of determining how organisms should tune dormancy duration to match the temporal autocorrelation of their envi...
Human-like Object Grouping in Self-supervised Vision Transformers
Zuckerman Mind Brain Behavior Institute, Columbia University | Department of Social Science and AI, Hankuk University of Foreign Studies | Nanyang Technological University | University of Hong Kong | Stony Brook University
30秒速读
IN SHORT: This paper addresses the core challenge of quantifying how well self-supervised vision models capture human-like object grouping in natural scenes, bridging the gap between computational representations and behavioral psychophysics.
核心创新
- Methodology Introduces a large-scale behavioral benchmark (1,020 trials) scaling up classical psychophysics to natural images, enabling quantitative comparison between model representations and human object perception.
- Methodology Proposes a novel object-centric metric based on ROC analysis of patch-level affinity maps that quantifies object boundary alignment without requiring object-level supervision.
- Biology Demonstrates that Gram matrix structure, capturing patch similarity patterns, is a key mechanism driving perceptual alignment between self-supervised models and human vision.
主要结论
- Self-supervised Transformer models trained with DINO objectives show strongest alignment with human behavior, with DINOv3 ViT-B achieving 91.9% grouping accuracy and highest noise-normalized Spearman correlation (Fig. 4A).
- Object-centric structure in patch representations, quantified by ROC AUC, strongly predicts behavioral alignment across models (correlation shown in Fig. 6B), with DINO-based models consistently outperforming supervised counterparts.
- Gram matrix distillation improves supervised models' alignment with human behavior, converging with independent evidence that Gram anchoring enhances DINOv3's feature quality.
摘要: Vision foundation models trained with self-supervised objectives achieve strong performance across diverse tasks and exhibit emergent object segmentation properties. However, their alignment with human object perception remains poorly understood. Here, we introduce a behavioral benchmark in which participants make same/different object judgments for dot pairs on naturalistic scenes, scaling up a classical psychophysics paradigm to over 1000 trials. We test a diverse set of vision models using a simple readout from their representations to predict subjects’ reaction times. We observe a steady improvement across model generations, with both architecture and training objective contributing to alignment, and transformer-based models trained with the DINO self-supervised objective showing the strongest performance. To investigate the source of this improvement, we propose a novel metric to quantify the object-centric component of representations by measuring patch similarity within and between objects. Across models, stronger object-centric structure predicts human segmentation behavior more accurately. We further show that matching the Gram matrix of supervised transformer models, capturing similarity structure across image patches, with that of a self-supervised model through distillation improves their alignment with human behavior, converging with the prior finding that Gram anchoring improves DINOv3’s feature quality. Together, these results demonstrate that self-supervised vision models capture object structure in a behaviorally human-like manner, and that Gram matrix structure plays a role in driving perceptual alignment.