Table of contents

  • This session has been presented September 27, 2024 (10:00 - 11:00).

Description

  • Speaker

    Francesco Servida - École des Sciences Criminelles, Université de Lausanne

This presentation aims to give an overview of the traces that can be obtained from connected objects as witnesses or actors at a crime scene. Using several scenarios we cover the challenges of detecting connected devices, the relevant locations for data retrieval and the techniques for acquiring said data. We then present how such data can be useful in helping to understand the dynamics of events of interest to investigators, as well as the challenges involved in exploiting such data.

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