How to Train Your Energy-Based Model for Regression - Supplementary Material

In this supplementary material, we provide additional details and results. It consists of Appendix A Appendix D. Appendix A contains a detailed algorithm for our employed prediction strategy. Further experimental details are provided in Appendix B for 1D regression, and in Appendix C for object detection. Lastly, Appendix D contains details and further results for the visual tracking experiments. Note that equations, tables, figures and algorithms in this supplementary document are numbered with the prefix "S". Numbers without this prefix refer to the main paper.

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