Poster
in
Affinity Event: Black in AI
Enhancing Amharic Sentence Segmentation with Prosodic Features and Neural Network Models
Rahel Mekonen Tamiru · Mengistu Negia · ABEL ALEMU
This study focuses on developing a sentence-level automatic speech segmentation system for Amharic. Two approaches were explored. The first approach utilized an automatic tool for segmenting and labeling Amharic speech data, creating an acoustic model through HMM modeling. The system's segmentation was refined using forced alignment AdaBoost techniques. In the second approach, prosodic features were extracted directly from the speech waveform, and statistical methods including AdaBoost were employed. Additionally, LSTM and Bi-LSTM models were utilized, achieving impressive accuracies of 94.62% and 95.23%, respectively. These approaches contribute to advancing automatic speech segmentation for Amharic, promising improved accuracy and efficiency.
Live content is unavailable. Log in and register to view live content