English

EVA: Bridging Performance and Human Alignment in Hard-Attention Vision Models for Image Classification

Computer Vision and Pattern Recognition 2026-03-31 v1

Abstract

Optimizing vision models purely for classification accuracy can impose an alignment tax, degrading human-like scanpaths and limiting interpretability. We introduce EVA, a neuroscience-inspired hard-attention mechanistic testbed that makes the performance-human-likeness trade-off explicit and adjustable. EVA samples a small number of sequential glimpses using a minimal fovea-periphery representation with CNN-based feature extractor and integrates variance control and adaptive gating to stabilize and regulate attention dynamics. EVA is trained with the standard classification objective without gaze supervision. On CIFAR-10 with dense human gaze annotations, EVA improves scanpath alignment under established metrics such as DTW, NSS, while maintaining competitive accuracy. Ablations show that CNN-based feature extraction drives accuracy but suppresses human-likeness, whereas variance control and gating restore human-aligned trajectories with minimal performance loss. We further validate EVA's scalability on ImageNet-100 and evaluate scanpath alignment on COCO-Search18 without COCO-Search18 gaze supervision or finetuning, where EVA yields human-like scanpaths on natural scenes without additional training. Overall, EVA provides a principled framework for trustworthy, human-interpretable active vision.

Keywords

Cite

@article{arxiv.2603.27340,
  title  = {EVA: Bridging Performance and Human Alignment in Hard-Attention Vision Models for Image Classification},
  author = {Pengcheng Pan and Yonekura Shogo and Kuniyoshi Yasuo},
  journal= {arXiv preprint arXiv:2603.27340},
  year   = {2026}
}
R2 v1 2026-07-01T11:42:23.854Z