CVDec 19, 2020

Political Posters Identification with Appearance-Text Fusion

arXiv:2012.10728v1
AI Analysis

This work provides a method for automatically identifying political posters, which can be used to generate detailed statistics and meet judgment needs in various areas.

The paper addresses the problem of identifying political posters from other political images. They achieve high accuracy by combining appearance and text features.

In this paper, we propose a method that efficiently utilizes appearance features and text vectors to accurately classify political posters from other similar political images. The majority of this work focuses on political posters that are designed to serve as a promotion of a certain political event, and the automated identification of which can lead to the generation of detailed statistics and meets the judgment needs in a variety of areas. Starting with a comprehensive keyword list for politicians and political events, we curate for the first time an effective and practical political poster dataset containing 13K human-labeled political images, including 3K political posters that explicitly support a movement or a campaign. Second, we make a thorough case study for this dataset and analyze common patterns and outliers of political posters. Finally, we propose a model that combines the power of both appearance and text information to classify political posters with significantly high accuracy.

Foundations

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