What the Machine Saw: some questions on the ethics of computer vision and machine learning to investigate human remains trafficking

Author:

Huffer Damien1ORCID,Wood Cristina2ORCID,Graham Shawn2ORCID

Affiliation:

1. Stockholm University

2. Carleton University

Abstract

This article represents the next step in our ongoing effort to understand the online human remains trade, how, why and where it exists on social media. It expands upon initial research to explore the 'rhetoric' and structure behind the use and manipulation of images and text by this collecting community, topics explored using Google Inception v.3, TensorFlow, etc. (Huffer and Graham 2017; 2018). This current research goes beyond that work to address the ethical and moral dilemmas that can confound the use of new technology to classify and sort thousands of images. The categories used to 'train' the machine are self-determined by the researchers, but to what extent can current image classifying methods be broken to create false positives or false negatives when attempting to classify images taken from social media sales records as either old authentic items or recent forgeries made using remains sourced from unknown locations? What potential do they have to be exploited by dealers or forgers as a way to 'authenticate the market'? Analysing the data obtained when 'scraping' image or text relevant to cultural property trafficking of any kind involves the use of machine learning and neural network analysis, the ethics of which are themselves complicated. Here, we discuss these issues around two case studies; the ongoing repatriation case of Abraham Ulrikab, and an example of what it looks like when the classifier is deliberately broken.

Funder

Carleton University

Social Sciences and Humanities Research Council of Canada

Publisher

Council for British Archaeology

Subject

Archeology,Archeology

Reference76 articles.

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2. Association of Computing Machinery 2018 ACM code of ethics and professional conduct ACM.org, https://www.acm.org/code-of-ethics [Last accessed: 5 December 2018]

3. Bailey, J. 2017 'Machine learning for art valuation. An interview with Ahmed Hosny', Artnome.com, https://www.artnome.com/news/2017/12/2/machine-learning-for-art-valuation [Last accessed: 17 December 2018]

4. Bethard, J.D., Berger, J.M. and Maiers, J. 2018 'Bone mineral density adult age estimation in forensic anthropology: a test of the DXAGE application', Journal of Forensic Sciences https://doi.org/10.1111/1556-4029.13987

5. Bowman, B.A. 2008 'Transnational crimes against culture: looting at archaeological sites and the “grey” market in antiquities', Journal of Contemporary Criminal Justice 24, 225-42. https://doi.org/10.1177/1043986208318210

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