LaTeX templates and examples — Conference Paper
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Template for CONINP Congress

An unofficial LaTeX template for Transportation Research Board (TRB) submission. Repository: https://github.com/wklchris/TRB-template

This is the template for the Cryptography and Information Security Conference (CISC). Due to copyright concerns about the BiauKai font, this template uses AR PL UKai TW as the main CJK font instead. But you're still able to upload the font to Overleaf by yourself. Notice: \nocite{*} is used to display reference examples. You should delete this line. The default template is for Chinese paper, please change the following parameters to the English version. labelsep = period % English = period, Chinese = space \renewcommand{\Authsep}{~} \renewcommand{\Authand}{~} \renewcommand{\Authands}{~} \renewcommand\figurename{圖} \renewcommand\tablename{表} \renewcommand\refname{參考文獻} % comment out these lines for English paper \parindent=1em % English = 1em, Chinese = 2em

The paper template for CiiS2021

Submission Template for AH2020

ACM DIS2020 Conference Long paper format. For more information see https://dis.acm.org/2020/

12th Edition of the Language Resources and Evaluation Conference LaTeX template. Source: https://lrec2020.lrec-conf.org/en/submission2020/authors-kit/.

Modelo para submissão no 4º Congresso Pós-Graduação do IFSP - 2019

Paper presented at ICCV 2019. This paper targets the task with discrete and periodic class labels (e.g., pose/orientation estimation) in the context of deep learning. The commonly used cross-entropy or regression loss is not well matched to this problem as they ignore the periodic nature of the labels and the class similarity, or assume labels are continuous value. We propose to incorporate inter-class correlations in a Wasserstein training framework by pre-defining (i.e., using arc length of a circle) or adaptively learning the ground metric. We extend the ground metric as a linear, convex or concave increasing function w.r.t. arc length from an optimization perspective. We also propose to construct the conservative target labels which model the inlier and outlier noises using a wrapped unimodal-uniform mixture distribution. Unlike the one-hot setting, the conservative label makes the computation of Wasserstein distance more challenging. We systematically conclude the practical closed-form solution of Wasserstein distance for pose data with either one-hot or conservative target label. We evaluate our method on head, body, vehicle and 3D object pose benchmarks with exhaustive ablation studies. The Wasserstein loss obtaining superior performance over the current methods, especially using convex mapping function for ground metric, conservative label, and closed-form solution.
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