| Literature DB >> 35769267 |
Hui Luo1, Qiang Zeng2.
Abstract
Visual communication concepts enable linguistics or semiotics to the teaching of visual communication designs, creating graphic designs into an innovative and scientific discipline. The use of storyline techniques in visual communication not only inspires the imagination of designer but also arouses the visual memory of the audience. Besides, improving cultural heritage such as historical images is important to protect cultural diversity. Recently, the developments of deep learning (DL) and computer vision (CV) approaches make it possible for the automatic colorization of grayscale images into color images. Also, the usage of visual communication design in APP interface design has increased. With this motivation, this work introduces the enhanced deep learning-based automated historical image colorization (EDL-AHIC) technique for wireless network-enabled visual communication. The proposed EDL-AHIC technique intends to effectually convert the grayscale images into color images. The presented EDL-AHIC technique extracts the local as well as global features. For global feature extraction, the enhanced capsule network (ECN) model is applied. Finally, the fusion layer and decoding unit are employed to determine the output, i.e., chrominance component of the input image. A comprehensive experimental validation process is performed to ensure the betterment of the EDL-AHIC technique. The comparison study reported the supremacy of the EDL-AHIC technique over the other recent methods.Entities:
Mesh:
Year: 2022 PMID: 35769267 PMCID: PMC9236836 DOI: 10.1155/2022/9262676
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Framework of CapsNet.
Figure 2Input black and white image.
Figure 3Output colorized image.
Comparative analysis of EDL-AHIC technique with recent approaches.
| Methods | MSE | RMSE | Accuracy | Training time (min) |
|---|---|---|---|---|
| CNN-Inception (100) | 1911.000 | 43.715 | 0.671 | 156.600 |
| CNN-Inception (200) | 608.000 | 24.658 | 0.752 | 375.000 |
| EDL-AHIC | 502.000 | 22.405 | 0.796 | 311.230 |
Figure 4MSE analysis of EDL-AHIC technique with recent methods.
Figure 5RMSE analysis of EDL-AHIC technique with recent methods.
Figure 6Accuracy analysis of EDL-AHIC technique with recent methods.
Figure 7Training time analysis of EDL-AHIC technique with recent methods.