Short Time Fourier Transform
The Short-Time Fourier Transform (STFT) is a fundamental signal processing technique that decomposes signals into time-frequency representations, revealing how frequency content changes over time. Current research focuses on improving STFT's application in various fields by addressing limitations like non-uniform phase distributions and developing differentiable versions for gradient-based optimization within deep learning models, such as convolutional neural networks (CNNs) and transformers. These advancements are significantly impacting diverse applications, including speech enhancement, machine condition monitoring, and audio source separation, by enabling more accurate feature extraction and improved model performance. The development of efficient and robust STFT-based methods continues to be a key area of investigation.
Papers
An End-to-End Comprehensive Gear Fault Diagnosis Method Based on Multi-Scale Feature-Level Fusion Strategy
Bowei Qiao, Hongwei WangXinjiang UniversityIntroducing the Short-Time Fourier Kolmogorov Arnold Network: A Dynamic Graph CNN Approach for Tree Species Classification in 3D Point Clouds
Said Ohamouddoua, Mohamed Ohamouddoub, Rafik Lasrib, Hanaa El Afiaa, Raddouane Chiheba, Abdellatif El AfiaaMohammed V University●Abdelmalek saadi University