菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-04-14
📄 Abstract - DINO-Explorer: Active Underwater Discovery via Ego-Motion Compensated Semantic Predictive Coding

Marine ecosystem degradation necessitates continuous, scientifically selective underwater monitoring. However, most autonomous underwater vehicles (AUVs) operate as passive data loggers, capturing exhaustive video for offline review and frequently missing transient events of high scientific value. Transitioning to active perception requires a causal, online signal that highlights significant phenomena while suppressing maneuver-induced visual changes. We propose DINO-Explorer, a novelty-aware perception framework driven by a continuous semantic surprise signal. Operating within the latent space of a frozen DINOv3 foundation model, it leverages a lightweight, action-conditioned recurrent predictor to anticipate short-horizon semantic evolution. An efference-copy-inspired module utilizes globally pooled optical flow to discount self-induced visual changes without suppressing genuine environmental novelty. We evaluate this signal on the downstream task of asynchronous event triage under variant telemetry constraints. Results demonstrate that DINO-Explorer provides a robust, bandwidth-efficient attention mechanism. At a fixed operating point, the system retains 78.8% of post-discovery human-reviewer consensus events with a 56.8% trigger confirmation rate, effectively surfacing mission-relevant phenomena. Crucially, ego-motion conditioning suppresses 45.5% of false positives relative to an uncompensated surprise signal baseline. In a replay-side Pareto ablation study, DINO-Explorer robustly dominates the validated peak F1 versus telemetry bandwidth frontier, reducing telemetry bandwidth by 48.2% at the selected operating point while maintaining a 62.2% peak F1 score, successfully concentrating data transmission around human-verified novelty events.

顶级标签: robotics computer vision agents
详细标签: active perception underwater robotics semantic novelty detection ego-motion compensation autonomous monitoring 或 搜索:

DINO-探索者:通过自我运动补偿的语义预测编码实现主动式水下发现 / DINO-Explorer: Active Underwater Discovery via Ego-Motion Compensated Semantic Predictive Coding


1️⃣ 一句话总结

这篇论文提出了一种名为DINO-Explorer的新型水下机器人感知框架,它能够主动识别并优先传输水下环境中具有科学价值的突发新奇事件,同时有效过滤掉机器人自身运动造成的视觉干扰,从而显著提升了水下监测的效率和带宽利用率。

源自 arXiv: 2604.12933