A new wave of vehicle insurance fraud fueled by generative AI
- URL: http://arxiv.org/abs/2510.19957v1
- Date: Wed, 22 Oct 2025 18:31:31 GMT
- Title: A new wave of vehicle insurance fraud fueled by generative AI
- Authors: Amir Hever, Itai Orr,
- Abstract summary: Insurance fraud is a pervasive and costly problem, amounting to tens of billions of dollars in losses each year.<n>The rise of generative AI, including deepfake image and video generation, has introduced new methods for committing fraud at scale.<n>Insurers have begun deploying countermeasures such as AI-based deepfake detection software.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Generative AI is supercharging insurance fraud by making it easier to falsify accident evidence at scale and in rapid time. Insurance fraud is a pervasive and costly problem, amounting to tens of billions of dollars in losses each year. In the vehicle insurance sector, fraud schemes have traditionally involved staged accidents, exaggerated damage, or forged documents. The rise of generative AI, including deepfake image and video generation, has introduced new methods for committing fraud at scale. Fraudsters can now fabricate highly realistic crash photos, damage evidence, and even fake identities or documents with minimal effort, exploiting AI tools to bolster false insurance claims. Insurers have begun deploying countermeasures such as AI-based deepfake detection software and enhanced verification processes to detect and mitigate these AI-driven scams. However, current mitigation strategies face significant limitations. Detection tools can suffer from false positives and negatives, and sophisticated fraudsters continuously adapt their tactics to evade automated checks. This cat-and-mouse arms race between generative AI and detection technology, combined with resource and cost barriers for insurers, means that combating AI-enabled insurance fraud remains an ongoing challenge. In this white paper, we present UVeye layered solution for vehicle fraud, representing a major leap forward in the ability to detect, mitigate and deter this new wave of fraud.
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