EDC3: Ensemble of Deep-Classifiers using Class-specific Copula functions to Improve Semantic Image Segmentation
This work addresses the challenge of improving semantic image segmentation for computer vision applications, representing an incremental advancement in fusion techniques.
The authors tackled the problem of semantic image segmentation by proposing a class-specific Copula-based ensembling method to improve performance over traditional single Copula functions and other state-of-the-art techniques, resulting in enhanced segmentation accuracy.
In the literature, many fusion techniques are registered for the segmentation of images, but they primarily focus on observed output or belief score or probability score of the output classes. In the present work, we have utilized inter source statistical dependency among different classifiers for ensembling of different deep learning techniques for semantic segmentation of images. For this purpose, in the present work, a class-wise Copula-based ensembling method is newly proposed for solving the multi-class segmentation problem. Experimentally, it is observed that the performance has improved more for semantic image segmentation using the proposed class-specific Copula function than the traditionally used single Copula function for the problem. The performance is also compared with three state-of-the-art ensembling methods.