Based on FCN and DenseNet Framework for the Research of Rice Pest Identification Methods

Author:

Gong He1234,Liu Tonghe1,Luo Tianye1,Guo Jie1,Feng Ruilong1,Li Ji1,Ma Xiaodan1,Mu Ye1234ORCID,Hu Tianli1234,Sun Yu1234,Li Shijun56,Wang Qinglan7,Guo Ying1234

Affiliation:

1. College of Information Technology, Jilin Agricultural University, Changchun 130118, China

2. Jilin Province Agricultural Internet of Things Technology Collaborative Innovation Center, Changchun 130118, China

3. Jilin Province Intelligent Environmental Engineering Research Center, Changchun 130118, China

4. Jilin Province Colleges and Universities and the 13th Five-Year Engineering Research Center, Changchun 130118, China

5. College of Information Technology, Wuzhou University, Wuzhou 543003, China

6. Guangxi Key Laboratory of Machine Vision and Inteligent Control, Wuzhou 543003, China

7. Jilin Academy of Agricultural Sciences, Changchun 130033, China

Abstract

One of the most important food crops is rice. For this reason, the accurate identification of rice pests is a critical foundation for rice pest control. In this study, we propose an algorithm for automatic rice pest identification and classification based on fully convolutional networks (FCNs) and select 10 rice pests for experiments. First, we introduce a new encoder–decoder in the FCN and a series of sub-networks connected by jump paths that combine long jumps and shortcut connections for accurate and fine-grained insect boundary detection. Secondly, the network also integrates a conditional random field (CRF) module for insect contour refinement and boundary localization, and finally, a novel DenseNet framework that introduces an attention mechanism (ECA) is proposed to focus on extracting insect edge features for effective rice pest classification. The proposed model was tested on the data set collected in this paper, and the final recognition accuracy was 98.28%. Compared with the other four models in the paper, the proposed model in this paper is more accurate, faster, and has good robustness; meanwhile, it can be demonstrated from our results that effective segmentation of insect images before classification can improve the detection performance of deep-learning-based classification systems.

Funder

Changchun Science and Technology Bureau

Jilin Provincial Development and Reform Commission

Department of Science and Technology of Jilin Province

Publisher

MDPI AG

Subject

Agronomy and Crop Science

Reference30 articles.

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