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Full-Text Articles in Law

Deprogramming Bias: Expanding The Exclusionary Rule To Pretextual Traffic Stop Using Data From Autonomous Vehicle And Drive-Assistance Technology, Joe Hillman Jun 2022

Deprogramming Bias: Expanding The Exclusionary Rule To Pretextual Traffic Stop Using Data From Autonomous Vehicle And Drive-Assistance Technology, Joe Hillman

University of Michigan Journal of Law Reform

As autonomous vehicles become more commonplace and roads become safer, this new technology provides an opportunity for courts to reconsider the constitutional rationale of modern search and seizure law. The Supreme Court should allow drivers to use evidence of police officer conduct relative to their vehicle’s technological capabilities to argue that a traffic stop was pretextual, meaning they were stopped for reasons other than their supposed violation. Additionally, the Court should expand the exclusionary rule to forbid the use of evidence extracted after a pretextual stop. The Court should retain some exceptions to the expanded exclusionary rule, such as when …


Rewriting Whren V. United States, Jonathan Feingold, Devon Carbado Apr 2022

Rewriting Whren V. United States, Jonathan Feingold, Devon Carbado

Faculty Scholarship

In 1996, the U.S. Supreme Court decided Whren v. United States—a unanimous opinion in which the Court effectively constitutionalized racial profiling. Despite its enduring consequences, Whren remains good law today. This Article rewrites the opinion. We do so, in part, to demonstrate how one might incorporate racial justice concerns into Fourth Amendment jurisprudence, a body of law that has long elided and marginalized the racialized dimensions of policing. A separate aim is to reveal the “false necessity” of the Whren outcome. The fact that Whren was unanimous, and that even progressive Justices signed on, might lead one to conclude that …