Supervised Autoencoder
Supervised autoencoders are neural networks trained to reconstruct input data (e.g., images, time series, 3D models) via a compressed latent representation, often used for dimensionality reduction, feature extraction, and anomaly detection. Current research emphasizes developing novel architectures like Kolmogorov-Arnold Networks and hierarchical autoencoders, and integrating autoencoders with other techniques such as diffusion models and contrastive learning to improve reconstruction quality and downstream task performance. This approach finds applications across diverse fields, from improving network throughput in autonomous vehicles to enhancing image generation and analysis in astronomy and medical imaging, demonstrating the broad utility of supervised autoencoders in data processing and analysis.
Papers
PARDINUS: Weakly supervised discarding of photo-trapping empty images based on autoencoders
David de la Rosa, Antonio J Rivera, María J del Jesus, Francisco Charte
ADA-GAD: Anomaly-Denoised Autoencoders for Graph Anomaly Detection
Junwei He, Qianqian Xu, Yangbangyan Jiang, Zitai Wang, Qingming Huang
Unsupervised Deep Learning Image Verification Method
Enoch Solomon, Abraham Woubie, Eyael Solomon Emiru
Using linear initialisation to improve speed of convergence and fully-trained error in Autoencoders
Marcel Marais, Mate Hartstein, George Cevora
Utilizing VQ-VAE for End-to-End Health Indicator Generation in Predicting Rolling Bearing RUL
Junliang Wang, Qinghua Zhang, Guanhua Zhu, Guoxi Sun
Advancements in Generative AI: A Comprehensive Review of GANs, GPT, Autoencoders, Diffusion Model, and Transformers
Staphord Bengesi, Hoda El-Sayed, Md Kamruzzaman Sarker, Yao Houkpati, John Irungu, Timothy Oladunni