TY - BOOK AU - Khuram, Nazli AU - Supervisor: Dr Muhammad Asim Waris TI - The Role of Synthetic One-Dimensional Biomedical Data in Machine Learning Overcoming Data Limitations U1 - 610 PY - 2025/// CY - Islamabad : PB - SMME- NUST; KW - MS Biomedical Engineering (BME) N1 - This research presents a two-stage approach to investigate the use of generative deep learning models to synthesize realistic surface electromyography (sEMG) signals for improved gesture recognition. In the first study, a Conditional Variational Autoencoder (CVAE) was developed to generate synthetic gesture-conditioned EMG data. Experiments conducted on a self-collected dataset and the publicly available Ninapro DB3 dataset demonstrated that classifiers trained on hybrid datasets (real+synthetic) achieved higher accuracies compared to real-only training with gains in some scenarios. The second study introduced a novel CVAE-TCN architecture integrating temporal convolutional networks to learn sequential dependencies and to enhance temporal realism of synthetic EMG signals. Evaluation metrics including Pearson correlation, Dynamic Time Warping (DTW), and Wasserstein distance confirmed improved signal fidelity and better class separation in the latent space. Across both studies the generative models proved effective in addressing data scarcity boosting classification performance and enhancing the robustness of sEMG based gesture recognition systems UR - http://10.250.8.41:8080/xmlui/handle/123456789/56475 ER -