UltraHiT: A Hierarchical Transformer Architecture for Generalizable Internal Carotid Artery Robotic Ultrasonography

Accepted to ICRA 2026
Teng Wang1,*, Haojun Jiang1,*,§, Yuxuan Wang2,*, Zhenguo Sun3, Xiangjie Yan1, Xiang Li1, Gao Huang1,†
1Department of Automation, BNRist, Tsinghua University, Beijing, China. 2School of Computer Science and Technology, Xidian University, Xian, China. 3Beijing Academy of Artificial Intelligence, Beijing, China.
*These authors contributed equally to this work.
§Haojun Jiang guided this work.
Corresponding author: Gao Huang. Email: gaohuang@tsinghua.edu.cn

Demo

Abstract

Carotid ultrasound is crucial for the assessment of cerebrovascular health, particularly the internal carotid artery (ICA). While previous research has explored automating carotid ultrasound, none has tackled the challenging ICA. This is primarily due to its deep location, tortuous course, and significant individual variations, which greatly increase scanning complexity. To address this, we propose a Hierarchical Transformer-based decision architecture, namely UltraHiT, that integrates high-level variation assessment with low-level action decision. Our motivation stems from conceptualizing individual vascular structures as morphological variations derived from a standard vascular model. The high-level module identifies variation and switches between two low-level modules: an adaptive corrector for variations, or a standard executor for normal cases. Specifically, both the high-level module and the adaptive corrector are implemented as causal transformers that generate predictions based on the historical scanning sequence. To ensure generalizability, we collected the first large-scale ICA scanning dataset comprising 164 trajectories and 72K samples from 28 subjects of both genders. Based on the above innovations, our approach achieves a 95% success rate in locating the ICA on unseen individuals, outperforming baselines and demonstrating its effectiveness. Our code will be released after acceptance.

Overview

Overview 1 Overview 2

Background

Background

Method

Method

Experiment

Experiment 1 Experiment 2