Affiliation:
1. Science Island Branch of Graduate School University of Science and Technology of China Hefei China
2. Institute of Intelligent Machines, Hefei Institutes of Physical Science Chinese Academy of Sciences Hefei China
3. Agricultural Economy and Information Research Institute Anhui Academy of Agricultural Sciences Hefei China
4. School of Internet and Telecommunication Anhui Technical College of Mechanical and Electrical Engineering Wuhu China
Abstract
AbstractBACKGROUNDEnsuring the efficient recognition and management of crop pests is crucial for maintaining the balance in global agricultural ecosystems and ecological harmony. Deep learning‐based methods have shown promise in crop pest recognition. However, prevailing methods often fail to address a critical issue: biased pest training dataset distribution stemming from the tendency to collect images primarily in certain environmental contexts, such as paddy fields. This oversight hampers recognition accuracy when encountering pest images dissimilar to training samples, highlighting the need for a novel approach to overcome this limitation.RESULTSWe introduce the Decoupled Feature Learning (DFL) framework, leveraging causal inference techniques to handle training dataset bias. DFL manipulates the training data based on classification confidence to construct different training domains and employs center triplet loss for learning class‐core features. The proposed DFL framework significantly boosts existing baseline models, attaining unprecedented recognition accuracies of 95.33%, 92.59%, and 74.86% on the Li, DFSPD, and IP102 datasets, respectively.CONCLUSIONExtensive testing on three pest datasets using standard baseline models demonstrates the superiority of DFL in pest recognition. The visualization results show that DFL encourages the baseline models to capture the class‐core features. The proposed DFL marks a pivotal step in mitigating the issue of data distribution bias, enhancing the reliability of deep learning in agriculture. © 2024 Society of Chemical Industry.