Harvesting Visual Objects from Internet Images via Deep-Learning-Based Objectness Assessment

Author:

Wu Kan1ORCID,Li Guanbin2,Li Haofeng1,Zhang Jianjun3,Yu Yizhou4

Affiliation:

1. The University of Hong Kong, Hong Kong S.A.R., China

2. Sun Yat-Sen University, Guangzhou, Guangdong, China

3. Bournemouth University, Poole, Dorset, United Kingdom

4. The University of Hong Kong and Deepwise AI Lab, Beijing, China

Abstract

The collection of internet images has been growing in an astonishing speed. It is undoubted that these images contain rich visual information that can be useful in many applications, such as visual media creation and data-driven image synthesis. In this article, we focus on the methodologies for building a visual object database from a collection of internet images. Such database is built to contain a large number of high-quality visual objects that can help with various data-driven image applications. Our method is based on dense proposal generation and objectness-based re-ranking. A novel deep convolutional neural network is designed for the inference of proposal objectness , the probability of a proposal containing optimally located foreground object. In our work, the objectness is quantitatively measured in regard of completeness and fullness , reflecting two complementary features of an optimal proposal: a complete foreground and relatively small background. Our experiments indicate that object proposals re-ranked according to the output of our network generally achieve higher performance than those produced by other state-of-the-art methods. As a concrete example, a database of over 1.2 million visual objects has been built using the proposed method, and has been successfully used in various data-driven image applications.

Funder

EU H2020 project-AniAge

National Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference63 articles.

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4. Measuring the Objectness of Image Windows

5. Pablo Arbeláez Jordi Pont-Tuset Jonathan T. Barron Ferran Marques and Jitendra Malik. 2014. Multiscale combinatorial grouping. In Computer Vision and Pattern Recognition. Pablo Arbeláez Jordi Pont-Tuset Jonathan T. Barron Ferran Marques and Jitendra Malik. 2014. Multiscale combinatorial grouping. In Computer Vision and Pattern Recognition.

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