2022
DOI: 10.48550/arxiv.2202.00770
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Local Feature Matching with Transformers for low-end devices

Abstract: LoFTR [19] is an efficient deep learning method for finding appropriate local feature matches on image pairs. This paper reports on the optimization of this method to work on devices with low computational performance and limited memory. The original LoFTR approach is based on a ResNet [6] head and two modules based on Linear Transformer [22] architecture. In the presented work, only the coarse-matching block was left, the number of parameters was significantly reduced, and the network was trained using a know… Show more

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