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CogniMap3D: Cognitive 3D Mapping and Rapid Retrieval

About

We present CogniMap3D, a bioinspired framework for dynamic 3D scene understanding and reconstruction that emulates human cognitive processes. Our approach maintains a persistent memory bank of static scenes, enabling efficient spatial knowledge storage and rapid retrieval. CogniMap3D integrates three core capabilities: a multi-stage motion cue framework for identifying dynamic objects, a cognitive mapping system for storing, recalling, and updating static scenes across multiple visits, and a factor graph optimization strategy for refining camera poses. Given an image stream, our model identifies dynamic regions through motion cues with depth and camera pose priors, then matches static elements against its memory bank. When revisiting familiar locations, CogniMap3D retrieves stored scenes, relocates cameras, and updates memory with new observations. Evaluations on video depth estimation, camera pose reconstruction, and 3D mapping tasks demonstrate its state-of-the-art performance, while effectively supporting continuous scene understanding across extended sequences and multiple visits.

Feiran Wang, Junyi Wu, Dawen Cai, Yuan Hong, Yan Yan• 2026

Related benchmarks

TaskDatasetResultRank
Video Depth EstimationSintel
Relative Error (Rel)0.295
109
Video Depth EstimationBONN
Relative Error (Rel)0.058
103
Camera pose estimationSintel
ATE0.176
92
Camera pose estimationScanNet
ATE RMSE (Avg.)0.019
61
Video Depth EstimationKITTI
Abs Rel0.069
47
3D Reconstruction7 Scenes
Accuracy Mean8.6
32
Camera pose estimationTUM-dynamic
ATE0.012
19
3D ReconstructionKITTI
Acc Mean0.052
9
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