Abstract

Abstract Military unmanned equipment target recognition is currently a research hotspot and trend in the field of military intelligence. The small sample size and complex recognition scenarios of military unmanned equipment image datasets result in low recognition accuracy. It is proposed a military unmanned equipment image target recognition method based on improved deep learning, which set Faster R-CNN as the network framework for target recognition, used the Kmeans++ algorithm to label boxes on customized datasets, and then added OHEM to the framework to improve the network’s recognition accuracy for difficult to recognize samples. The accuracy of the algorithm proposed in this article reaches 93.8%, which is 2.8% higher than the YOLOv5 algorithm, providing an improved deep learning method for military unmanned equipment image target recognition.

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