TensorMap: Lidar-Based Topological Mapping and Localization via Tensor Decompositions
Rambhatla, Sirisha, Sidiropoulos, Nikos D., Haupt, Jarvis
We propose a technique to develop (and localize in) topological maps from light detection and ranging (Lidar) data. Localizing an autonomous vehicle with respect to a reference map in real-time is crucial for its safe operation. Owing to the rich information provided by Lidar sensors, these are emerging as a promising choice for this task. However, since a Lidar outputs a large amount of data every fraction of a second, it is progressively harder to process the information in real-time. Consequently, current systems have migrated towards faster alternatives at the expense of accuracy. To overcome this inherent trade-off between latency and accuracy, we propose a technique to develop topological maps from Lidar data using the orthogonal Tucker3 tensor decomposition. Our experimental evaluations demonstrate that in addition to achieving a high compression ratio as compared to full data, the proposed technique, $\textit{TensorMap}$, also accurately detects the position of the vehicle in a graph-based representation of a map. We also analyze the robustness of the proposed technique to Gaussian and translational noise, thus initiating explorations into potential applications of tensor decompositions in Lidar data analysis.
Feb-26-2019
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- North America > United States
- Virginia > Albemarle County
- Charlottesville (0.14)
- Minnesota > Hennepin County
- Minneapolis (0.14)
- Michigan > Wayne County
- Dearborn (0.04)
- Virginia > Albemarle County
- Africa > Senegal
- Kolda Region > Kolda (0.04)
- North America > United States
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- Research Report (0.50)
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