Unleash the Top Gaming Platforms in Bangladesh for 2025

Step into a secure and thrilling world of gaming with these cutting-edge platforms.

CRICKEX: Master Every Moment

Enhance your gaming expertise with CRICKEX, crafted for peak entertainment.

R777: Redefining Rewards

Experience unmatched excitement with R777, where every game offers more.

CRAZY TIME: Adventure Awaits

Dive into endless possibilities with CRAZY TIME, your go-to platform for action.

MCW: The Future of Fun

Explore limitless gaming opportunities with MCW, built for enthusiasts.

CRICKEX: Play with Confidence

Engage in seamless and secure gameplay with CRICKEX, your trusted companion.

MCW: Endless Action

Immerse yourself in nonstop thrills with MCW, where every moment matters.

BAJI: Fun Without Borders

Discover a world of gaming excitement with BAJI, made for adventurous spirits.

CRAZY TIME: Next-Level Gaming

Explore innovative gameplay options with CRAZY TIME, tailored for thrill-seekers.

Alternative Text

A Method for Voiced/Unvoiced Classification of Noisy Speech by Analyzing Time-Domain Features of Spectrogram Image

This paper presents a voiced/unvoiced classification algorithm of the noisy speech signal by analyzing two acoustic features of the speech signal. Short-time energy and short-time zero- crossing rates are one of the most distinguishable time domain features of a speech signal to classify its voiced activity into voiced/unvoiced segment. A new idea is developed where frame by frame processing has done in narrow band speech signal using spectrogram image. Two time domain features, short-time energy (STE) and short-time zero-crossing rate (ZCR) are used to classify its voiced/unvoiced parts. In the first stage, each frame of the analyzing spectrogram is divided into three separate sub bands and examines their short-time energy ratio pattern. Then an energy ratio pattern matching look up table is used to classify the voicing activity. However, this method successfully classifies patterns 1 through 4 but fails in the rest of the patterns in the look up table. Therefore, the rest of the patterns are confirmed in the second stage where frame wise short-time average zero- crossing rate is compared with a threshold value. In this study, the threshold value is calculated from the short-time average zero-crossing rate of White Gaussian Noise (wGn). The accuracy of the proposed method is evaluated using both male and female speech waveforms under different signal to-noise ratios (SNRs). Experimental results show that the proposed method achieves better accuracy than the conventional methods in the literature.