Ray-Aware Pointer Memory with Adaptive Updates for Streaming 3D Reconstruction
Feifei Li, Qi Song, Chi Zhang, Rui Huang

TL;DR
This paper introduces a ray-aware pointer memory system with adaptive updates for streaming 3D reconstruction, improving stability and accuracy by explicitly modeling spatial and viewing direction information.
Contribution
It proposes a novel memory representation that jointly models spatial location and ray direction, along with an adaptive update strategy for more stable long-term 3D reconstruction.
Findings
Significantly improves long-term reconstruction stability.
Enhances camera pose accuracy in streaming scenarios.
Maintains efficient memory growth through selective pointer retention.
Abstract
Dense 3D reconstruction from continuous image streams requires both accurate geometric aggregation and stable long-term memory management. Recent feed-forward reconstruction frameworks integrate observations through persistent memory representations, yet most rely primarily on appearance-based similarity when updating memory. Such appearance-driven integration often leads to redundant accumulation of observations and unstable geometry when viewpoint changes occur. In this work, we propose a ray-aware pointer memory for streaming 3D reconstruction that explicitly models both spatial location and viewing direction within a unified memory representation. Each memory pointer stores its 3D position, associated ray direction, and feature embedding, allowing the system to reason jointly about geometric proximity and viewpoint consistency. Based on this representation, we introduce an adaptive…
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