Deepali SaleAmol P. BhagatPranit BhalekarRohit GordeMahendra Gayakwad
Speech Emotion Recognition (SER) has gained increasing attention due to its application in fields such as human-computer interaction, healthcare, customer service automation, and affective computing. This review focuses on the application of Deep Neural Networks (DNNs), specifically Feedforward Neural Networks (FNNs), in detecting and classifying emotions from speech signals. Recent advancements in deep learning have significantly enhanced the ability of machines to interpret emotional cues from auditory data. This paper discusses the motivation, objectives, and scope of employing DNN FNN architectures for SER. We also address the technical feasibility and potential of this approach for real-time applications. By reviewing existing literature, this study aims to provide insights into the current progress, challenges, and future prospects of SER systems.
Muhammad Fahreza AlghifariTeddy Surya GunawanMira Kartiwi
Khorshed AlamNishargo NigarHeidy ErlerAnonnya Banerjee
Nupoor C. KhandelwalMinakshi M. WanjariBhushan Vidhale
Fatin B. SofiaS. AhmedAbdul-basit K. Faeq
Fauzivy ReggiswarashariSari Widya Sihwi