Abstract
An effective feature descriptor is proposed for multimodal local-image patch matching. The conventional self-similarity hypercube (SSH) fails in multimodal image matching due to different intensities of multimodal images. To mitigate this problem, a dual-codebook clustering is proposed for generating the descriptors. It is based on extracting a codebook, respectively, from visible and thermal images but sharing the same k-means clustering index of the local features of visible and thermal image patches. The experimental results show that the proposed approach effectively solves the multimodal image quantisation problem. Moreover, a voting strategy based on the proposed similarity family function facilitates the multimodal image matching more robustly compared with the conventional state-of-the-art methods.
Cite
CITATION STYLE
Wang, H., Han, D. K., & Ko, H. (2014). Multimodal image matching via dualcodebook-based self-similarity hypercube feature descriptor and voting strategy. Electronics Letters, 50(21), 1518–1520. https://doi.org/10.1049/el.2014.1802
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