Pomelo Tree Detection Method Based on Attention Mechanism and Cross-Layer Feature Fusion

Author:

Yuan HaotianORCID,Huang Kekun,Ren Chuanxian,Xiong Yongzhu,Duan JieliORCID,Yang Zhou

Abstract

Deep learning is the subject of increasing research for fruit tree detection. Previously developed deep-learning-based models are either too large to perform real-time tasks or too small to extract good enough features. Moreover, there has been scarce research on the detection of pomelo trees. This paper proposes a pomelo tree-detection method that introduces the attention mechanism and a Ghost module into the lightweight model network, as well as a feature-fusion module to improve the feature-extraction ability and reduce computation. The proposed method was experimentally validated and showed better detection performance and fewer parameters than some state-of-the-art target-detection algorithms. The results indicate that our method is more suitable for pomelo tree detection.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Guangdong Province

Guangdong Province Special Project in Key Fields for Universities

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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