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Exploring Object-Centric and Scene-Centric CNN Features and Their Complementarity for Human Rights Violations Recognition in Images

Exploring Object-Centric and Scene-Centric CNN Features and Their Complementarity for Human Rights Violations Recognition in Images
Exploring Object-Centric and Scene-Centric CNN Features and Their Complementarity for Human Rights Violations Recognition in Images
Identifying potential abuses of human rights through imagery is a novel and challenging task in the field of computer vision, which will enable to expose human rights violations over large-scale data that may otherwise be impossible. While standard databases for object and scene categorization contain hundreds of different classes, the largest available dataset of human rights violations contains only four classes. Here, we introduce the human rights archive (HRA) database, a verified-by-experts repository of 3050 human rights violations photographs, labeled with human rights semantic categories, comprising a list of the types of human rights abuses encountered at present. With the HRA dataset and a two-phase transfer learning scheme, we fine-tuned the state-of-the-art deep convolutional neural networks (CNNs) to provide human rights violations classification CNNs. We also present extensive experiments refined to evaluate how well object-centric and scene-centric CNN features can be combined for the task of recognizing human rights abuses. With this, we show that the HRA database poses a challenge at a higher level for the well-studied representation learning methods and provide a benchmark in the task of human rights violations recognition in visual context. We expect that this dataset can help to open up new horizons on creating systems that are able to recognize rich information about human rights violations.
Computer vision, image interpretation, visual recognition, convolutional neural networks, human rights abuses recognition
2169-3536
10045-10056
Kalliatakis, Grigorios
1f07e6e1-dbbd-44c6-bc4a-885dea793bb1
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Leonardis, Ales
ed38f4ad-444e-4850-9391-34aaf12ce8fd
Fasli, Maria
0628512e-ac16-48a8-b679-b940f61dd45e
Mcdonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9
Kalliatakis, Grigorios
1f07e6e1-dbbd-44c6-bc4a-885dea793bb1
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Leonardis, Ales
ed38f4ad-444e-4850-9391-34aaf12ce8fd
Fasli, Maria
0628512e-ac16-48a8-b679-b940f61dd45e
Mcdonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9

Kalliatakis, Grigorios, Ehsan, Shoaib, Leonardis, Ales, Fasli, Maria and Mcdonald-Maier, Klaus D. (2019) Exploring Object-Centric and Scene-Centric CNN Features and Their Complementarity for Human Rights Violations Recognition in Images. IEEE Access, 7, 10045-10056. (doi:10.1109/ACCESS.2019.2891745).

Record type: Article

Abstract

Identifying potential abuses of human rights through imagery is a novel and challenging task in the field of computer vision, which will enable to expose human rights violations over large-scale data that may otherwise be impossible. While standard databases for object and scene categorization contain hundreds of different classes, the largest available dataset of human rights violations contains only four classes. Here, we introduce the human rights archive (HRA) database, a verified-by-experts repository of 3050 human rights violations photographs, labeled with human rights semantic categories, comprising a list of the types of human rights abuses encountered at present. With the HRA dataset and a two-phase transfer learning scheme, we fine-tuned the state-of-the-art deep convolutional neural networks (CNNs) to provide human rights violations classification CNNs. We also present extensive experiments refined to evaluate how well object-centric and scene-centric CNN features can be combined for the task of recognizing human rights abuses. With this, we show that the HRA database poses a challenge at a higher level for the well-studied representation learning methods and provide a benchmark in the task of human rights violations recognition in visual context. We expect that this dataset can help to open up new horizons on creating systems that are able to recognize rich information about human rights violations.

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More information

Published date: 9 January 2019
Keywords: Computer vision, image interpretation, visual recognition, convolutional neural networks, human rights abuses recognition

Identifiers

Local EPrints ID: 478924
URI: http://eprints.soton.ac.uk/id/eprint/478924
ISSN: 2169-3536
PURE UUID: db803aa7-cda9-498d-b353-c81383bbff40
ORCID for Shoaib Ehsan: ORCID iD orcid.org/0000-0001-9631-1898

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Date deposited: 13 Jul 2023 16:52
Last modified: 17 Mar 2024 04:16

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Contributors

Author: Grigorios Kalliatakis
Author: Shoaib Ehsan ORCID iD
Author: Ales Leonardis
Author: Maria Fasli
Author: Klaus D. Mcdonald-Maier

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