Multi-level learning features for automatic classification of field crop pests
文献类型: 外文期刊
第一作者: Xie, Chengjun
作者: Xie, Chengjun;Wang, Rujing;Zhang, Jie;Chen, Peng;Li, Rui;Chen, Tianjiao;Chen, Hongbo;Chen, Peng;Dong, Wei
作者机构:
关键词: Pest classification; Unsupervised feature learning; Dictionary learning; Feature encoding
期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:5.565; 五年影响因子:5.494 )
ISSN: 0168-1699
年卷期: 2018 年 152 卷
页码:
收录情况: SCI
摘要: The classification of pest species in field crops, such as corn, soybeans, wheat, and canola, is still challenging because of the tiny appearance differences among pest species. In all cases, the appearances of pest species in different poses, scales or rotations make the classification more difficult. Currently, most of the classification methods relied on hand-crafted features, such as the scale-invariant feature transform (SIFT) and the histogram of oriented gradients (HOG). In this work, the features of pest images are learned from a large amount of unlabeled image patches using unsupervised feature learning methods, while the features of the image patches are obtained by the alignment-pooling of low-level features (sparse coding), which are encoded based on a predefined dictionary. To address the misalignment issue of patch-level features, the filters in multiple scales are utilized by being coupled with several pooling granularities. The filtered patch-level features are then embedded into a multi-level classification framework. The experimental results on 40 common pest species in field crops showed that our classification model with the multi-level learning features outperforms the state-of-the-art methods of pest classification. Furthermore, some models of dictionary learning are evaluated in the proposed classification framework of pest species, and the impact of dictionary sizes and patch sizes are also discussed in the work.
分类号:
- 相关文献
作者其他论文 更多>>
-
Comfort temperature assessment for honeybee colonies based on long-term monitoring
作者:Lu, Yuntao;Wu, Wei;Zhang, Jie;Li, Shijuan;Liu, Shengping;Hong, Wei;Hong, Wei
关键词:Extreme weather; Comfort assessment model; Precision beekeeping
-
Structural insights into the mechanism of phosphate recognition and transport by XPR1
作者:Zhang, Wenhui;Chen, Yanke;Guan, Zeyuan;Tang, Meng;Du, Zhangmeng;Zhang, Jie;Cheng, Meng;Zuo, Jiaqi;Liu, Yan;Wang, Qiang;Liu, Yanjun;Zhang, Delin;Yin, Ping;Ma, Ling;Liu, Zhu;Wang, Yong;Liu, Zhu
关键词:
-
Mutations in a Leucine-Rich Repeat Receptor-Like Kinase gene result in male sterility and reduction in the number and size of fruit warts in cucumber (Cucumis sativus L.)
作者:Zhang, Haiqiang;Luo, Yanjie;Zhen, Wenlong;Li, Xin;Liu, Mengying;Liu, Peng;Li, Yuhong;Zhang, Gaoyuan;Chen, Peng;Weng, Yiqun;Yue, Hongzhong
关键词:
-
LACCASE35 enhances lignification and resistance against Pseudomonas syringae pv. actinidiae infection in kiwifruit
作者:Li, Yawei;Zhang, Dongle;Wang, Xiaojie;Wu, Shunyuan;Liu, Pu;Wang, Xiaojie;Zhou, Rongrong;Fang, Zemin;Bai, Fuxi;Li, Rui;Liu, Wei;Huang, Lili
关键词:
-
Efficient Triple Attention and AttentionMix: A Novel Network for Fine-Grained Crop Disease Classification
作者:Zhang, Yanqi;Zhang, Ning;Chai, Xiujuan;Zhu, Jingbo;Dong, Wei;Sun, Tan
关键词:crop pests and diseases; CNNs; channel attention; spatial attention; data augmentation
-
Influence of the 'painless' TRP channel on temperature-dependent escape and humidity-related pupation in Bactrocera dorsalis larvae
作者:Zhang, Yan;Zhang, Panpan;Luo, Zhicai;Wang, Qi;Zhang, Jie;Yang, Minghuan;Yan, Shanchun;Liu, Wei;Wang, Guirong
关键词:Bactrocera dorsalis; Bdorpainless; CRISPR/Cas9; extreme environments; escape behavior
-
Dihydromyricetin Suppresses Lipopolysaccharide-Induced Intestinal Injury Through Reducing Reactive Oxygen Species Generation and NOD-Like Receptor Pyrin Domain Containing 3 Inflammasome Activation
作者:Chang, Yicong;Jiang, Xinru;Ji, Zhenghua;Gong, Yingchao;Fan, Xianan;Hao, Beili;Yuan, Liang;Muhammad, Ishfaq;Li, Rui;Liu, Fangping;Chang, Yicong;Li, Rui;Liu, Fangping;Li, Changwen
关键词:dihydromyricetin; intestinal injury; lipopolysaccharide; NLRP3 inflammasome; ROS