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    This study introduces adaptive curriculum embedded multistage learning (ACEMSL) for visual drone swarms to perform collaborative target search (CTS) efficiently. The novel approach enables data-efficient training and successful real-world deployment for complex search missions.

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    Area of Science:

    • Robotics
    • Artificial Intelligence
    • Computer Vision

    Background:

    • Collaborative target search (CTS) with visual drone swarms is crucial for disaster rescue and logistics.
    • Challenges include 3D sparse reward exploration, limited visual perception, and complex collaborative behaviors.
    • Existing methods struggle with data efficiency and adaptability in dynamic environments.

    Purpose of the Study:

    • To develop a data-efficient deep reinforcement learning (DRL) approach for CTS in visual drone swarms.
    • To address challenges of sparse rewards, limited perception, and multi-agent collaboration.
    • To enable effective autonomous CTS operations in real-world scenarios.

    Main Methods:

    • Proposed adaptive curriculum embedded multistage learning (ACEMSL) for visual drone swarms.
    • Decomposed CTS into subtasks: obstacle avoidance, target search, and inter-agent collaboration.
    • Implemented an adaptive embedded curriculum (AEC) to adjust task difficulty based on success rate.

    Main Results:

    • ACEMSL demonstrated data-efficient training and effective individual-team reward allocation.
    • The approach was successfully deployed on a real drone swarm for CTS without fine-tuning.
    • Extensive simulations and real-world tests validated the method's effectiveness and generalizability.

    Conclusions:

    • ACEMSL provides an effective solution for data-efficient collaborative target search in visual drone swarms.
    • The method addresses key challenges in sparse reward exploration and multi-agent coordination.
    • Validated effectiveness in both simulated and real-world flight tests, paving the way for practical applications.