Citation
Omar, Zaid and Ahmed, Saif S. and Mohd Mokji, Musa and Hanafi, Marsyita and Bhateja, Vikrant
(2016)
Wavelet-based medical image fusion via a non-linear operator.
In: 2016 IEEE Region 10 Conference (TENCON), 22-25 Nov. 2016, Marina Bay Sands, Singapore. (pp. 1262-1265).
Abstract
Medical image fusion has been extensively used to aid medical diagnosis by combining images of various modalities such as Computed Tomography (CT) and Magnetic Resonance Image (MRI) into a single output image that contains salient features from both inputs. This paper proposes a novel fusion algorithm through the use of a non-linear fusion operator, based on the low sub-band coefficients of the Discrete Wavelet Transform (DWT). Rather than employing the conventional mean rule for approximation sub-bands, a modified approach is taken by the introduction of a non-linear fusion rule that exploits the multimodal nature of the image inputs by prioritizing the stronger coefficients. Performance evaluation of CT-MRI image fusion datasets based on a range of wavelet filter banks shows that the algorithm boasts improved scores of up to 92% as compared to established methods. Overall, the non-linear fusion rule holds strong potential to help improve image fusion applications in medicine and indeed other fields.
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