Performance Metric Estimation of Fast RCNN with VGG-16 Architecture for Emotional Recognition
-
Published:2022-06-25
Issue:
Volume:4
Page:30-38
-
ISSN:
-
Container-title:International Journal of Applied Mathematics, Computational Science and Systems Engineering
-
language:
-
Short-container-title:
Author:
J Samson Immanuel1, G Manoj1, P. S. Divya2
Affiliation:
1. Department of ECE, Karunya Institute of Technology and Sciences Karunya Nagar, Coimbatore, Tamil Nadu INDIA-641114 2. Department of Mathematics, Karunya Institute of Technology and Sciences Karunya Nagar, Coimbatore, Tamil Nadu INDIA-641114
Abstract
Faster R-CNN is a state-of-the-art universal object detection approach based on a convolutional neural network that offers object limits and objectness scores at each location in an image at the same time. To hypothesis object locations, state-of-the-art object detection networks rely on region proposal techniques. The accuracy of ML/DL models has been shown to be limited in the past due to a range of issues, including wavelength selection, spatial resolution, and hyper parameter selection and tuning. The goal of this study is to create a new automated emotional detection system based on the CK+ database. Fast R-CNN has lowered the detection network’s operating time, revealing region proposal computation as a bottleneck. We develop a Region Proposal Network (RPN) in this paper that shares full-image convolutional features with the detection network, allowing for almost cost-free region suggestions. The suggested VGG-16 Fast RCNN model obtained user accuracy close to 100 percent in the emotion class, followed by VGG-16 (99.79 percent), Alexnet (98.58 percent), and Googlenet (98.58 percent) (98.32 percent). After extensive hyper parameter tuning for emotional recognition, the generated Fast RCNN VGG-16 model showed an overall accuracy of 99.79 percent, far higher than previously published results.
Publisher
World Scientific and Engineering Academy and Society (WSEAS)
Reference18 articles.
1. Girshick, R., Donahue, J., Darrell, T., & Malik, J. “Rich feature hierarchies for accurate object detection and semantic segmentation”. CVPR 2019, 1–8. http://arxiv. 2. Wang, K., Dong, Y., Bai, H., Zhao, Y., & KunHu. “Use Fast R-CNN and Cascade Structure for Face Detection”. VCIP 2016.Author, Title of the Book, Publishing House, 200X. 3. Girshick, R. “Fast R-CNN”. Microsoft Research. 2015, http://arxiv.org/abs/1504.08083 4. Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D., Erhan, D., Vanhoucke, V., & Rabinovich, A. “Going Deeper with Convolutions”. CVPR 2015, 1–9. 5. Pang, J., Chen, K., Shi, J., Feng, H., Ouyang, W., & Lin, D. “Libra R-CNN: Towards balanced learning for object detection”. Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2019-June, 821– 830. https://doi.org/10.1109/CVPR.2019.00091
|
|