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Comparison Of Facial Emotion Recognition Models Using Deep Learning, Arsany Hanin
Comparison Of Facial Emotion Recognition Models Using Deep Learning, Arsany Hanin
University of New Orleans Theses and Dissertations
Facial emotion recognition is a widely studied area with applications in diverse domains such as human-computer interaction, affective computing, and social robotics. This thesis aims to improve the accuracy of facial emotion recognition models by incorporating a second neural network trained on original probabilities and probability transformation, while also comparing the performance of different techniques. The thesis begins with a thorough review of available datasets and technologies used for data collection, highlighting the challenges associated with these datasets. A detailed analysis of various facial emotion detection models, including the baseline model and its different architectures, is presented. The thesis also …
Analysis Of Human Affect And Bug Patterns To Improve Software Quality And Security, Md Rakibul Islam
Analysis Of Human Affect And Bug Patterns To Improve Software Quality And Security, Md Rakibul Islam
University of New Orleans Theses and Dissertations
The impact of software is ever increasing as more and more systems are being software operated. Despite the usefulness of software, many instances software failures have been causing tremendous losses in lives and dollars. Software failures take place because of bugs (i.e., faults) in the software systems. These bugs cause the program to malfunction or crash and expose security vulnerabilities exploitable by malicious hackers.
Studies confirm that software defects and vulnerabilities appear in source code largely due to the human mistakes and errors of the developers. Human performance is impacted by the underlying development process and human affects, such as …