PCAN: 3D Attention Map Learning Using Contextual Information for Point Cloud Based Retrieval
About
Point cloud based retrieval for place recognition is an emerging problem in vision field. The main challenge is how to find an efficient way to encode the local features into a discriminative global descriptor. In this paper, we propose a Point Contextual Attention Network (PCAN), which can predict the significance of each local point feature based on point context. Our network makes it possible to pay more attention to the task-relevent features when aggregating local features. Experiments on various benchmark datasets show that the proposed network can provide outperformance than current state-of-the-art approaches.
Wenxiao Zhang, Chunxia Xiao• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Place Recognition | Oxford RobotCar | Avg Recall @ 1%83.8 | 43 | |
| Place Recognition | Oxford | AR@1%86.4 | 42 | |
| Place Recognition | B.D. | AR@1%87 | 40 | |
| Place Recognition | R.A. | AR@1 (%)92.5 | 40 | |
| Place Recognition | University Sectors (U.S.) | Recall@1%94.1 | 30 | |
| Place Recognition | Oxford RobotCar (test) | Avg Recall @1%83.81 | 27 | |
| Place Recognition | U.S. | AR@1%94.1 | 20 | |
| Point cloud place recognition | Oxford RobotCar (test) | Average Recall @ 1%86.4 | 12 | |
| Place Recognition | Oxford Refined Dataset | AR@1%92.3 | 10 | |
| Place Recognition | Residential Area (R.A.) | Avg Recall @ 1%71.2 | 10 |
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