SonoSelect: Efficient Ultrasound Perception via Active Probe Exploration

arXiv cs.CV / 4/8/2026

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Key Points

  • 複数の超音波スキャン視点が診断の曖昧さ低減や遮蔽(アコースティック・オクルージョン)対策、被覆範囲の拡大に有効だが、全視点を網羅すると冗長性やコストが増える点が課題として示されました。
  • その解決として、現状の観測に基づいてプローブ移動を能動的に決める「active view exploration」問題を定義し、逐次意思決定として超音波向けに定式化した SonoSelect を提案しています。
  • 各2D視点を3D空間メモリへ融合し、それを次のプローブ位置のガイドに用いることで、臓器カバー率向上・再構成不確実性低下・冗長スキャン削減を同時に狙う目的関数を導入しています。
  • シミュレータ実験では、全N視点のうち2視点のみでも多視点臓器分類で有望な精度を達成したと報告されています。

Abstract

Ultrasound perception typically requires multiple scan views through probe movement to reduce diagnostic ambiguity, mitigate acoustic occlusions, and improve anatomical coverage. However, not all probe views are equally informative. Exhaustively acquiring a large number of views can introduce substantial redundancy, increase scanning and processing costs. To address this, we define an active view exploration task for ultrasound and propose SonoSelect, an ultrasound-specific method that adaptively guides probe movement based on current observations. Specifically, we cast ultrasound active view exploration as a sequential decision-making problem. Each new 2D ultrasound view is fused into a 3D spatial memory of the observed anatomy, which guides the next probe position. On top of this formulation, we propose an ultrasound-specific objective that favors probe movements with greater organ coverage, lower reconstruction uncertainty, and less redundant scanning. Experiments on the ultrasound simulator show that SonoSelect achieves promising multi-view organ classification accuracy using only 2 out of N views. Furthermore, for a more difficult kidney cyst detection task, it reaches 54.56% kidney coverage and 35.13% cyst coverage, with short trajectories consistently centered on the target cyst.