000 01893nam a22001577a 4500
082 _a610
100 _aAshraf, Naila
_9130433
245 _aAdaptive Denoising of Respiratory Sounds with a Hybrid Discrete Wavelet Transform and 1D CNN Framework /
_cNaila Ashraf
264 _aIslamabad :
_bSMME- NUST;
_c2025.
300 _a63
_bSoft Copy
_c30cm
500 _aAccurate analysis of respiratory sounds holds key importance in precise diagnosis of pulmonary diseases. These sounds are sometimes noisy which require an effective diagnosing method for noise reduction and correct analysis of lung sounds. Traditional denoising methods are limited to spectral overlap with background noise. This study attempts for denoising biomedical signals utilizing discrete wavelet convolutional neural network (DW-CNN), an adaptive filter consists of multiresolution ability of discrete wavelet transform (DWT) and deep feature learning ability of neural networks, which preserve the signal details. Encoder-decoder structure of DW-CNN with inverse DWT accurately reconstructs the signal, outperforming traditional wavelet denoising. LS signals under real noise conditions were denoised using DW-CNN, where DWT replaced traditional pooling layers. Results were quantitatively compared with baseline traditional methods using Signal to Noise Ratio (SNR) and Root Mean Square Error (RMSE) metrics. On average there is an improvement of 9.61 dB in SNR and a reduction of 0.35489 in RMSE. Final results highlight the better performance of implemented model over conventional methods, increasing the scope of combined model in pattern recognition, clinical diagnostics and wearable devices.
650 _aMS Biomedical Engineering (BME)
_9119509
700 _aSupervisor : Dr. Muhammad Asim Waris
_9119524
856 _uhttp://10.250.8.41:8080/xmlui/handle/123456789/54567
942 _2ddc
_cTHE
999 _c614595
_d614595