Autoencoder Architecture
Autoencoders are neural networks designed to learn efficient data representations by compressing input data into a lower-dimensional latent space and then reconstructing it. Current research focuses on improving autoencoder architectures for specific tasks, including variations like convolutional autoencoders, masked autoencoders, and those incorporating attention mechanisms or other advanced techniques such as Koopman operator theory and Wasserstein distance. These advancements are driving progress in diverse fields, from image compression and anomaly detection (e.g., in ECGs and cybersecurity) to medical image analysis and scientific machine learning, enabling more efficient data processing and improved model performance.
Papers
An Autoencoder Architecture for L-band Passive Microwave Retrieval of Landscape Freeze-Thaw Cycle
Divya Kumawat, Ardeshir Ebtehaj, Xiaolan Xu, Andreas Colliander, Vipin Kumar
Autoencoded Image Compression for Secure and Fast Transmission
Aryan Kashyap Naveen, Sunil Thunga, Anuhya Murki, Mahati A Kalale, Shriya Anil