Artificial intelligence (AI) is rapidly being integrated into the United States criminal justice system under the promise of efficiency and objectivity. This article challenges that narrative, arguing that AI-powered surveillance technologies, particularly facial recognition and predictive policing, function as new vectors for systemic racism. Through a critical examination of federal studies, seminal journalistic investigations, and recent documented cases of wrongful arrest, this paper demonstrates how these systems are not merely biased but serve to automate and scale discriminatory practices. Landmark studies, such as those by the National Institute of Standards and Technology (NIST), reveal that facial recognition algorithms exhibit significantly higher error rates for racial minorities. Furthermore, case studies of predictive tools like COMPAS show a clear racial disparity in risk assessments. The analysis concludes that these technologies create a dangerous feedback loop: biased data from historically over-policed communities trains algorithms to identify those same communities as high-risk, thereby justifying and intensifying their surveillance. This process launders historical prejudice through a seemingly neutral technological interface, entrenching racial inequality and posing a profound threat to justice.
Guangda Liang (Sat,) studied this question.