LoopNet: A Multitasking Few-Shot Learning Approach for Loop Closure in Large Scale SLAM
Nakshbandi, Mohammad-Maher, Sharawy, Ziad, Grigorescu, Sorin
–arXiv.org Artificial Intelligence
-- One of the main challenges in the Simultaneous Localization and Mapping (SLAM) loop closure problem is the recognition of previously visited places. In this work, we tackle the two main problems of real-time SLAM systems: 1) loop closure detection accuracy and 2) real-time computation constraints on the embedded hardware. Our LoopNet method is based on a multitasking variant of the classical ResNet architecture, adapted for online retraining on a dynamic visual dataset and optimized for embedded devices. The online retraining is designed using a few-shot learning approach. The architecture provides both an index into the queried visual dataset, and a measurement of the prediction quality.
arXiv.org Artificial Intelligence
Jul-22-2025