TY - BOOK AU - Mohamed Sayed Abdelmonem Abdo AU - Ahmed Hisham Kandil , AU - Ahmed Mohamed Elbialy , AU - Sahar Ali Fawzi , TI - Automatic arabic speech syllables segmentation / PY - 2018/// CY - Cairo : PB - Mohamed Sayed Abdelmonem Abdo , KW - Arabic language KW - Automatic segmentation KW - Syllable boundaries N1 - Thesis (Ph.D.) - Cairo University - Faculty of Engineering - Department of Systems and Biomedical Engineering; Issued also as CD N2 - Syllables are the fundamental units of Arabic language. The proposed 2Neural Network based Arabic Speech Segmentation System (NNASS)3 is an adaptive Arabic speech syllable boundaries identifier that mainly serves as an automatic segmentation tool for speaker independent 2Arabic speech verification (ASV)3 and speech corpus/database construction systems. Cpestral peaks extracted from recorded speech signal within a certain validation thresholds assignment are considered probable boundaries. These probable boundaries are applied to NNASS to classify them into valid or invalid ones. An algorithm using neural networks is developed to train the features of valid boundaries/ cores. A program is developed to precisely identify the boundaries/cores from the test utterance, where the segmentation is done at their locations. The accuracy of NNASS was 87 % and 92.2 % identification rates with a semi-automatic labeling of the test dataset for verification within 10 and 20 milliseconds using two sample sizes. It will be shown that the system can be expanded to include more trained utterances for more than application UR - http://172.23.153.220/th.pdf ER -