Since MDLatLRR only considers detailed parts (salient features) of input images extracted by latent low-rank representation (LatLRR), it doesn't use base parts (principal features) extracted by LatLRR effectively. Therefore, we proposed an improved multi-level decomposition method called MDLatLRRv2 which effectively analyzes and utilizes all the image features obtained by LatLRR. Then we apply MDLatLRRv2 to medical image fusion. The base parts are fused by average strategy and the detail parts are fused by nuclear-norm operation. The comparison with the existing methods demonstrates that the proposed method can achieve state-of-the-art fusion performance in objective and subjective assessment.
翻译:由于MDLatLRR只考虑由潜伏低位代表制(LatLRR)提取的输入图像的详细部分(高度特征),因此它没有有效地使用LatLRR提取的基础部分(主要特征),因此,我们建议改进称为MDLatLRRv2的多级分解方法,该方法有效分析和利用LatLRR获得的所有图像特征。然后,我们将MDLatLRRV2应用于医学图像聚合。基础部分由平均战略结合,细节部分由核中枢操作结合。与现有方法的比较表明,拟议方法可以在客观和主观评估中实现最先进的聚合性能。