Search Results - recognition+imaging

3 Results Sort By:
Polynomial Implicit Neural Representations for Large Diverse Datasets
Deep learning-based generative models are an active area of research with numerous advancements in recent years. Most widely, generative models are based on convolutional neural network (CNN) architectures. In signal and image processing tasks, such as superresolution, 3D modeling, and more, implicit neural representations (INRs) can represent an image...
Published: 2/9/2024   |   Inventor(s): Pavan Turaga, Rajhans Singh, Ankita Shukla
Keywords(s): Algorithm Development, Imaging, Machine Learning, Neural Computing, PS-Computing and Information Technology, Recognition imaging
Category(s): Computing & Information Technology, Physical Science
Improving Shape Awareness and Interpretability in Deep Networks
Advances in deep learning have resulted in state-of-the-art performance for a wide variety of computer vision tasks. The large quantity of training data and high computation resources have made convolutional neural networks (CNNs) a common backbone model for many of these tasks, including image classification, object detection, segmentation, unsupervised...
Published: 2/9/2024   |   Inventor(s): Pavan Turaga, Rajhans Singh, Ankita Shukla
Keywords(s): Algorithm Development, Imaging, Machine Learning, Neural Computing, PS-Computing and Information Technology, Recognition imaging
Category(s): Computing & Information Technology, Physical Science
Authenticating a User on a Mobile Device
Protecting mobile devices from unauthorized access is becoming more than indispensable these days. In particular, mobile devices such as smartphones and tablets are pervasive and store increasingly highly sensitive information about a user (e.g., contacts, usernames, passwords, emails, browser histories, business secrets, health conditions, etc.)....
Published: 2/27/2023   |   Inventor(s): Yimin Chen, Yanchao Zhang
Keywords(s): Authentication, Detection, Mobile technology, Recognition imaging, Security, Transactions Security
Category(s): Computing & Information Technology, Physical Science, Intelligence & Security