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Published:2025/11/8 2:52:14

UAV追跡、Evaderを翻弄(ほんろう)!AIで賢く安全確保✨

超要約:UAV(ドローン)がAIで賢く追跡!都市の安全を守るよ☆

✨ ギャル的キラキラポイント ✨ ● 街中でドローンがEvader(逃げる人)をAIで追跡! ● 事前情報なしでOK!賢いAIが状況に合わせて動くの♪ ● セキュリティ、配送、災害救助…色んな分野で活躍期待!

詳細解説いくよ~!

背景 都会でドローンが活躍する時代、安全を守るにはEvaderをしっかり追跡しなきゃ!でも、障害物とか、Evaderがどこにいるか分からない状況ってあるじゃん?既存の研究じゃ、情報が全部分かってたり、制限があったり…🤔

続きは「らくらく論文」アプリで

Evader-Agnostic Team-Based Pursuit Strategies in Partially-Observable Environments

Addison Kalanther / Daniel Bostwick / Chinmay Maheshwari / Shankar Sastry

We consider a scenario where a team of two unmanned aerial vehicles (UAVs) pursue an evader UAV within an urban environment. Each agent has a limited view of their environment where buildings can occlude their field-of-view. Additionally, the pursuer team is agnostic about the evader in terms of its initial and final location, and the behavior of the evader. Consequently, the team needs to gather information by searching the environment and then track it to eventually intercept. To solve this multi-player, partially-observable, pursuit-evasion game, we develop a two-phase neuro-symbolic algorithm centered around the principle of bounded rationality. First, we devise an offline approach using deep reinforcement learning to progressively train adversarial policies for the pursuer team against fictitious evaders. This creates $k$-levels of rationality for each agent in preparation for the online phase. Then, we employ an online classification algorithm to determine a "best guess" of our current opponent from the set of iteratively-trained strategic agents and apply the best player response. Using this schema, we improved average performance when facing a random evader in our environment.

cs / cs.MA