Alert button
Picture for Jose C. Principe

Jose C. Principe

Alert button

An Analytic Solution for Kernel Adaptive Filtering

Add code
Bookmark button
Alert button
Feb 05, 2024
Benjamin Colburn, Luis G. Sanchez Giraldo, Kan Li, Jose C. Principe

Viaarxiv icon

Weakly-Supervised Semantic Segmentation of Circular-Scan, Synthetic-Aperture-Sonar Imagery

Add code
Bookmark button
Alert button
Jan 20, 2024
Isaac J. Sledge, Dominic M. Byrne, Jonathan L. King, Steven H. Ostertag, Denton L. Woods, James L. Prater, Jermaine L. Kennedy, Timothy M. Marston, Jose C. Principe

Viaarxiv icon

An Alternate View on Optimal Filtering in an RKHS

Add code
Bookmark button
Alert button
Dec 19, 2023
Benjamin Colburn, Jose C. Principe, Luis G. Sanchez Giraldo

Viaarxiv icon

The Functional Wiener Filter

Add code
Bookmark button
Alert button
Dec 31, 2022
Benjamin Colburn, Luis G. Sanchez Giraldo, Jose C. Principe

Figure 1 for The Functional Wiener Filter
Figure 2 for The Functional Wiener Filter
Figure 3 for The Functional Wiener Filter
Figure 4 for The Functional Wiener Filter
Viaarxiv icon

Adapting the Exploration Rate for Value-of-Information-Based Reinforcement Learning

Add code
Bookmark button
Alert button
Dec 31, 2022
Isaac J. Sledge, Jose C. Principe

Figure 1 for Adapting the Exploration Rate for Value-of-Information-Based Reinforcement Learning
Figure 2 for Adapting the Exploration Rate for Value-of-Information-Based Reinforcement Learning
Figure 3 for Adapting the Exploration Rate for Value-of-Information-Based Reinforcement Learning
Figure 4 for Adapting the Exploration Rate for Value-of-Information-Based Reinforcement Learning
Viaarxiv icon

The Cross Density Kernel Function: A Novel Framework to Quantify Statistical Dependence for Random Processes

Add code
Bookmark button
Alert button
Dec 09, 2022
Bo Hu, Jose C. Principe

Figure 1 for The Cross Density Kernel Function: A Novel Framework to Quantify Statistical Dependence for Random Processes
Figure 2 for The Cross Density Kernel Function: A Novel Framework to Quantify Statistical Dependence for Random Processes
Figure 3 for The Cross Density Kernel Function: A Novel Framework to Quantify Statistical Dependence for Random Processes
Figure 4 for The Cross Density Kernel Function: A Novel Framework to Quantify Statistical Dependence for Random Processes
Viaarxiv icon

Robust Dependence Measure using RKHS based Uncertainty Moments and Optimal Transport

Add code
Bookmark button
Alert button
Nov 03, 2022
Rishabh Singh, Jose C. Principe

Figure 1 for Robust Dependence Measure using RKHS based Uncertainty Moments and Optimal Transport
Figure 2 for Robust Dependence Measure using RKHS based Uncertainty Moments and Optimal Transport
Figure 3 for Robust Dependence Measure using RKHS based Uncertainty Moments and Optimal Transport
Figure 4 for Robust Dependence Measure using RKHS based Uncertainty Moments and Optimal Transport
Viaarxiv icon

Quantifying Model Uncertainty for Semantic Segmentation using Operators in the RKHS

Add code
Bookmark button
Alert button
Nov 03, 2022
Rishabh Singh, Jose C. Principe

Figure 1 for Quantifying Model Uncertainty for Semantic Segmentation using Operators in the RKHS
Figure 2 for Quantifying Model Uncertainty for Semantic Segmentation using Operators in the RKHS
Figure 3 for Quantifying Model Uncertainty for Semantic Segmentation using Operators in the RKHS
Figure 4 for Quantifying Model Uncertainty for Semantic Segmentation using Operators in the RKHS
Viaarxiv icon

Principle of Relevant Information for Graph Sparsification

Add code
Bookmark button
Alert button
May 31, 2022
Shujian Yu, Francesco Alesiani, Wenzhe Yin, Robert Jenssen, Jose C. Principe

Figure 1 for Principle of Relevant Information for Graph Sparsification
Figure 2 for Principle of Relevant Information for Graph Sparsification
Figure 3 for Principle of Relevant Information for Graph Sparsification
Figure 4 for Principle of Relevant Information for Graph Sparsification
Viaarxiv icon