scholarly journals Isolated Telugu Speech Recognition On TDSCC And DNN Techniques

Communication is the major path to convey the information. Speech is the best mode for conveying the information. Human to human information can be exchanged through some particular language. But the interaction between human and machine is the major challenge which deals with ASR (Automatic speech recognition). This research recognizes speaker independent data which gives good results by using TDSCC (Teager energy operator delta spectral cepstral coefficients) feature extraction technique and DNN (Deep Neural Networks) feature classification technique. This paper also uses CASA technique for pre-processing the speech signals. This research is done by creating the database for 10 most speak able isolated words in Telugu.

2019 ◽  
Vol 8 (3) ◽  
pp. 4728-4731

This paper deals with the basic application speech recognition. There are many languages in the world but one of the regional language is Telugu. Recognition of this language helps in many applications for 8 crores of people stay in AP and Telangana states. Recognition is done by recording the speech signals and database creation. Pre-processing is done by 2 stage DNN (seep neural networks) where denoising, framing is done. The preprocessed signal features are extracted using TLPC(teager energy operator linear prediction filter). The features extracted are classified using DNN which generates adequate results. The results are obtained for continuous speech of Telugu language


2019 ◽  
Vol 8 (4) ◽  
pp. 7156-7159

his Research focus on the recognition of speech signals for Telugu language. The data of Telugu language considered is in isolated format. 10 isolated words are considered which are frequently spoken and recognized. Advanced technique named Tri spectral technique and DNN is used for this recognition. Tri spectral is a feature extraction technique. DNN is a feature classification technique. This research can be used in many interfacing systems which helps the humans to interact with the hardware or software systems easily. Design of ASR (“Automatic Speech Recognition System”) deals with many parameters which should finally conclude with promising recognition results. This techniques used in this research has given a better result with the accuracy of approximately 96.27%.


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