TARGETED ATTACKS ON DEEP REINFORCEMENT LEARNING-BASED AUTONOMOUS DRIVING WITH LEARNED VISUAL PATTERNS

    公开(公告)号:US20240303349A1

    公开(公告)日:2024-09-12

    申请号:US18599821

    申请日:2024-03-08

    IPC分类号: G06F21/57 G06N20/00

    摘要: A system may be configured for implementing targeted attacks on deep reinforcement learning-based autonomous driving with learned visual patterns. In some examples, processing circuitry receives first input specifying an initial state for a driving environment and user configurable input specifying a target state. Processing circuitry may generate a representative dataset of the driving environment by performing multiple rollouts of the vehicle through the driving environment, including performing an action for the vehicle from the initial state with variable strength noise added to determine a next state for each rollout resulting from the action. Processing circuitry may train an artificial intelligence model to output a next predicted state based on the representative dataset as training input. In such an example, processing circuitry outputs from the artificial intelligence model, an attack plan against the autonomous driving agent to achieve the target state from the initial state.