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Procapra Przewalskii Tracking Autonomous Unmanned Aerial Vehicle Based on Improved Long and Short-Term Memory Kalman Filters.

Wei LuoYongxiang ZhaoQuanqin ShaoXiaoliang LiDongliang WangTongzuo ZhangFei LiuLongfang DuanYuejun HeYancang WangGuoqing ZhangXinghui WangZhongde Yu
Published in: Sensors (Basel, Switzerland) (2023)
This paper presents an autonomous unmanned-aerial-vehicle (UAV) tracking system based on an improved long and short-term memory (LSTM) Kalman filter (KF) model. The system can estimate the three-dimensional (3D) attitude and precisely track the target object without manual intervention. Specifically, the YOLOX algorithm is employed to track and recognize the target object, which is then combined with the improved KF model for precise tracking and recognition. In the LSTM-KF model, three different LSTM networks ( f , Q , and R ) are adopted to model a nonlinear transfer function to enable the model to learn rich and dynamic Kalman components from the data. The experimental results disclose that the improved LSTM-KF model exhibits higher recognition accuracy than the standard LSTM and the independent KF model. It verifies the robustness, effectiveness, and reliability of the autonomous UAV tracking system based on the improved LSTM-KF model in object recognition and tracking and 3D attitude estimation.
Keyphrases
  • working memory
  • systematic review
  • randomized controlled trial
  • machine learning
  • neural network
  • big data