A New Comic Image Segmentation and Adaptive Differential Evolution Algorithm with Different Times Characteristics

Main Article Content

Dr. Sivanagireddy Kalli*
Dr. Srilakshmi Aouthu
Dr.B. Narendra Kumar
Dr. Yerram Srinivas
Dr. S. Jagadeesh
Dr Jatothu Brahmaiah Naik

Abstract

Comic scene segmentation is crucial in understanding and analyzing visual storytelling, as it involves identifying and separating distinct elements within a sequence of panels. This paper proposes a novel segmentation approach, Frog Leap Differential Time Series Segmentation (FLDTSS), tailored for analyzing comic images, which often contain complex visual storytelling elements such as expressive characters, dynamic speech bubbles, and background effects. By leveraging time-series features across sequential comic panels, FLDTSS integrates both spatial and temporal cues for more context-aware segmentation. The method was tested on a diverse set of cartoon panels and achieved a precision of 91.6%, recall of 88.3%, and an F1-score of 89.9%, outperforming traditional methods such as Otsu Thresholding (F1-score: 70.6%), Edge-based Canny (76.1%), K-means Clustering (77.8%), Watershed (80.6%), and even Genetic Algorithm-based segmentation (83.2%). The segmentation time for FLDTSS was 1.22 seconds, demonstrating computational efficiency compared to more intensive evolutionary methods. Simulation results showed the model's ability to extract meaningful narrative components such as characters, speech bubbles, emotional cues, and visual effects, with background occupying ~55% of the segmented area, character regions ~22%, and speech bubbles ~8%. This study confirms FLDTSS as a powerful and scalable technique for semantic segmentation and narrative interpretation in visual storytelling formats like comics.

Article Details

Section
Articles

References

Rishu, & Kukreja, V. (2024). Decoding comics: a systematic literature review on recognition, segmentation, and classification techniques with emphasis on computer vision and non-computer vision. Multimedia Tools and Applications, 1-68.

Saiwaeo, S., Arwatchananukul, S., Mungmai, L., Preedalikit, W., & Aunsri, N. (2023). Human skin type classification using image processing and deep learning approaches. Heliyon, 9(11).

Eisham, Z. K., Haque, M. M., Rahman, M. S., Nishat, M. M., Faisal, F., & Islam, M. R. (2023). Chimp optimization algorithm in multilevel image thresholding and image clustering. Evolving Systems, 14(4), 605-648.

Srinivasa Sai Abhijit Challapalli. (2024). Optimizing Dallas-Fort Worth Bus Transportation System Using Any Logic. Journal of Sensors, IoT & Health Sciences, 2(4), 40-55.

Oluwasammi, A., Aftab, M. U., Qin, Z., Ngo, S. T., Doan, T. V., Nguyen, S. B., ... & Nguyen, G. H. (2021). Features to text: a comprehensive survey of deep learning on semantic segmentation and image captioning. Complexity, 2021(1), 5538927.

Tan, F., Zhai, M., & Zhai, C. (2024). Foreign object detection in urban rail transit based on deep differentiation segmentation neural network. Heliyon, 10(17).

Xue, Z., Song, G., Guo, Q., Liu, B., Zong, Z., Liu, Y., & Luo, P. (2023). Raphael: Text-to-image generation via large mixture of diffusion paths. Advances in Neural Information Processing Systems, 36, 41693-41706.

Srinivasa Sai Abhijit Challapalli. (2024). Sentiment Analysis of the Twitter Dataset for the Prediction of Sentiments. Journal of Sensors, IoT & Health Sciences, 2(4), 1-15.

Yang, Z., & Yang, S. (2023). Multimedia image evaluation based on blockchain, visual communication design and color balance optimization. Heliyon, 9(12).

Huang, R., Zhang, Y., Liu, R., Song, Z., Ren, Z., & Pu, M. (2021). Application of Liver CT Image Based on Sueno Fuzzy C-Means Graph Cut and Genetic Algorithm in Feature Extraction and Classification of Liver Cancer. Journal of Medical Imaging and Health Informatics, 11(9), 2481-2489.

A.B. Hajira Be. (2024). Feature Selection and Classification with the Annealing Optimization Deep Learning for the Multi-Modal Image Processing. Journal of Computer Allied Intelligence, 2(3), 55-66.

Adegboye, O. R., Feda, A. K., Ishaya, M. M., Agyekum, E. B., Kim, K. C., Mbasso, W. F., & Kamel, S. (2023). Antenna S-parameter optimization based on golden sine mechanism based honey badger algorithm with tent chaos. Heliyon, 9(11).

Zhang, M., Wang, J., Cao, X., Xu, X., Zhou, J., & Chen, H. (2024). An integrated global and local thresholding method for segmenting blood vessels in angiography. Heliyon, 10(22).

Hollandi, R., Moshkov, N., Paavolainen, L., Tasnadi, E., Piccinini, F., & Horvath, P. (2022). Nucleus segmentation: towards automated solutions. Trends in Cell Biology, 32(4), 295-310.

Mencattini, A., Spalloni, A., Casti, P., Comes, M. C., Di Giuseppe, D., Antonelli, G., ... & Martinelli, E. (2021). NeuriTES. Monitoring neurite changes through transfer entropy and semantic segmentation in bright-field time-lapse microscopy. Patterns, 2(6).

Srinivasa Sai Abhijit Challapalli, Bala kandukuri, Hari Bandireddi, & Jahnavi Pudi. (2024). Profile Face Recognition and Classification Using Multi-Task Cascaded Convolutional Networks. Journal of Computer Allied Intelligence, 2(6), 65-78.

Bazhenov, E., Jarsky, I., Efimova, V., & Muravyov, S. (2024, September). EvoVec: Evolutionary Image Vectorization with Adaptive Curve Number and Color Gradients. In International Conference on Parallel Problem Solving from Nature (pp. 383-397). Cham: Springer Nature Switzerland.

Reddy, A. M., Reddy, K. S., Jayaram, M., Lakshmi, N. V. M., Aluvalu, R., Mahesh, T. R., ... & Alex, D. S. (2022). Research Article An Efficient Multilevel Thresholding Scheme for Heart Image Segmentation Using a Hybrid Generalized Adversarial Network.

Dong, Y., Fei, C., Zhao, G., Wang, L., Liu, Y., Liu, J., ... & Zhao, X. (2023). Registration method for infrared and visible image of sea surface vessels based on contour feature. Heliyon, 9(3).

Wang, G., Hu, J., Zhang, Y., Xiao, Z., Huang, M., He, Z., ... & Bai, Z. (2024). A modified U-Net convolutional neural network for segmenting periprostatic adipose tissue based on contour feature learning. Heliyon, 10(3).

Javidan, S. M., Banakar, A., Vakilian, K. A., Ampatzidis, Y., & Rahnama, K. (2024). Early detection and spectral signature identification of tomato fungal diseases (Alternaria alternata, Alternaria solani, Botrytis cinerea, and Fusarium oxysporum) by RGB and hyperspectral image analysis and machine learning. Heliyon, 10(19).

Zhao, S., Yao, X., Yang, J., Jia, G., Ding, G., Chua, T. S., ... & Keutzer, K. (2021). Affective image content analysis: Two decades review and new perspectives. IEEE Transactions on Pattern Analysis and Machine Intelligence, 44(10), 6729-6751.

Panda, J., & Meher, S. (2024). Recent advances in 2d image upscaling: a comprehensive review. SN Computer Science, 5(6), 735.

Liu, Y., Sun, Y., Xue, B., Zhang, M., Yen, G. G., & Tan, K. C. (2021). A survey on evolutionary neural architecture search. IEEE transactions on neural networks and learning systems, 34(2), 550-570.

Plutino, A., Barricelli, B. R., Casiraghi, E., & Rizzi, A. (2021). Scoping review on automatic color equalization algorithm. Journal of Electronic Imaging, 30(2), 020901-020901.