Accomplishments

Emotion Detection Through Speech Using Bidirectional LSTM And Attention Mechanism


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Category
Conference
Authors
Conference Name
International Conference On Computing Technologies For Transforming The Automated World 2020 (ICCYAW 2020)
Conference From
23-Apr-2020
Conference To
24-Apr-2020
Conference Venue
Atharva College of Engineering
  • Abstract

Artificial Intelligence is growing and developing at an exceptional rate. Artificial machines and robots are incorporated with various ways to handle different scenarios and come up with accurate solutions through artificial intelligence. However, when it comes to taking some decisions based on emotions and including emotional quotient in the decision-making process, artificial machines face some issues. Apart from this, embedding emotions into Artificial intelligence just widens the scope for various further researches. To work on improving the emotional aspect in artificial intelligence systems, we need to first tackle the issue of detecting emotions with least possible errors. In this paper the aim is to find ways to improve upon accuracy in emotion detection through deep learning. Deep learning methods work by processing a vast database gathered from a number of sources. The analysis initiates by vectorizing each word in the input given by the user and deriving the meaning of the words in both, forward and backward direction. Upon understanding the meaning, attention mechanism defines the weights to be assigned to the words based on the importance they carry. This results in a maximum pooling of the highest weight vectors. The vectors then proceed to be classified in one of the six major emotions.

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