AICRJan 8

AI Safeguards, Generative AI and the Pandora Box: AI Safety Measures to Protect Businesses and Personal Reputation

arXiv:2601.06197v1h-index: 3
Originality Incremental advance
AI Analysis

This work addresses the social hazards and risks posed by generative AI, such as deepfakes, for businesses and individuals, representing an incremental improvement in detection techniques.

The paper tackles the problem of detecting harmful deepfakes generated by AI to protect businesses and personal reputation, proposing a Temporal Consistency Learning (TCN) method that outperforms other approaches with significant accuracy across five specific issues.

Generative AI has unleashed the power of content generation and it has also unwittingly opened the pandora box of realistic deepfake causing a number of social hazards and harm to businesses and personal reputation. The investigation & ramification of Generative AI technology across industries, the resolution & hybridization detection techniques using neural networks allows flagging of the content. Good detection techniques & flagging allow AI safety - this is the main focus of this paper. The research provides a significant method for efficiently detecting dark side problems by imposing a Temporal Consistency Learning (TCL) technique. Through pretrained Temporal Convolutional Networks (TCNs) model training and performance comparison, this paper showcases that TCN models outperforms the other approaches and achieves significant accuracy for five dark side problems. Findings highlight how important it is to take proactive measures in identification to reduce any potential risks associated with generative artificial intelligence.

Foundations

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