Comparative Analysis of Facial Expression Detection Techniques Based on Neural Network
-
2018-12-03 https://doi.org/10.14419/ijet.v7i4.38.27597 -
Object Detection, Robotics, Pattern Recognition, Neural Network, Facial Expression, Computer Vision -
Abstract
Face detection is a critical part of vision and a robot needs to identify a human accurately. A human face undergoes several states of facial expression in a day. Many object detection techniques are applied to identify a facial expression from a digital image or a video frame. Each object detection technique has its own benefits. The overall objective of this paper is to explore the benefits and limitation of existing techniques and provide a comparative analysis. Neural network based facial expression detection technique has demonstrated potential benefits over existing facial expression detection techniques.
Â
Â
-
References
Michel Owayjan, Roger Achkar and Moussa Iskanda ,“Face Detection with Expression Recognition using Artificial Neural Networksâ€, IEEE, 2016
[2] Chenghao Zheng ,Menglong Yang and Chengpeng Wang, “A Real-Time Face Detector Based on an End-to-End CNN†, IEEE, 2017
[3] Jiajun Wang, Beizhan Wang, Yinhuan Zheng and Weiqiang Liu, “Research and Implementation on Face Detection Approach Based on Cascaded Convolutional Neural Networks’, IEEE, 2017
[4] Kaihao Zhang,Yongzhen Huang, Hong Wu and Liang Wang, “Facial smile detection based on deep learning features†, IEEE, 2015
[5] Xin Guo, Luisa Polania and Kenneth Barner , “Smile Detection in the Wild Based on Transfer Learningâ€, IEEE, 2018
[6] Chi Cuong Nguyen, Giang Son Tran, Thi Phuong Nghiem, Nhat Quang Doan, Damien Gratadour, Jean Christophe Burie, Chi Mai Luong, “Towards Real-Time Smile Detection Based on Faster Region Convolutional Neural Network†, IEEE, 2018
[7] Nikolay Neshov and Agata Manolova , “Pain detection from facial characteristics using supervised descent methodâ€, IEEE, 2015
[8] Weihong Deng, Jiani Hu, Shuo Zhang and Jun Guo ,“DeepEmo: Real-world facial expression analysis via deep learningâ€, IEEE, 2015
[9] Talia Tron, Abraham Peled, Alexander Grinsphoon and Daphna Weinshall , “Facial expressions and flat affect in schizophrenia, automatic analysis from depth camera dataâ€, IEEE, 2016
[10] Carla M. C. Paxiuba and Celson P. Lima, “A methodological approach — Working emotions and learning using facial expressionsâ€, IEEE, 2018
[11] Gloria Zen, Lorenzo Porzi, Enver Sangineto, Elisa Ricci and Nicu Sebe, “Learning Personalized Models for Facial Expression Analysis and Gesture Recognitionâ€, IEEE, 2016
[12] Aditya Kamath, Aradhya Biswas and Vineeth Balasubramanian, “A crowdsourced approach to student engagement recognition in e-learning environmentsâ€, IEEE, 2016
[13] Petr aloun, Jakob Stonawski and Ivan Zelinka, “Recommending New Links in Social Networks Using Face Recognitionâ€, IEEE, 2013
[14] Samira Reihanian, Ehsan Arbabi and Behrouz Maham, “Random sparse representation for thermal to visible face recognitionâ€, IEEE, 2017
[15] Siti Nurhana Abd Wahab, Suzaimah Ramli and Norulzahrah Mohd Zainudin, “Temperature determining method from motion detection using thermal imagesâ€, IEEE, 2015
[16] Chule Yang, Danwei Wang and Prarinya Siritanawan, “Organ-Based Facial Verification Using Thermal Cameraâ€, IEEE, 2016.
-
Downloads
-
How to Cite
Mohan, Y., & Tripathi, V. (2018). Comparative Analysis of Facial Expression Detection Techniques Based on Neural Network. International Journal of Engineering & Technology, 7(4.38), 866-870. https://doi.org/10.14419/ijet.v7i4.38.27597Received date: 2019-02-20
Accepted date: 2019-02-20
Published date: 2018-12-03