Journal of Shanghai Jiao Tong University (Science) ›› 2019, Vol. 24 ›› Issue (2): 220-225.doi: 10.1007/s12204-018-2013-y
XUE Ankang (薛安康), LI Fan* (李凡), XIONG Yin (熊吟)
出版日期:
2019-04-30
发布日期:
2019-04-01
通讯作者:
LI Fan* (李凡)
E-mail:478263823@qq.com
XUE Ankang (薛安康), LI Fan* (李凡), XIONG Yin (熊吟)
Online:
2019-04-30
Published:
2019-04-01
Contact:
LI Fan* (李凡)
E-mail:478263823@qq.com
摘要: In recent years, automatic identification of butterfly species arouses more and more attention in different areas. Because most of their larvae are pests, this research is not only meaningful for the popularization of science but also important to the agricultural production and the environment. Texture as a notable feature is widely used in digital image recognition technology; for describing the texture, an extremely effective method, graylevel co-occurrence matrix (GLCM), has been proposed and used in automatic identification systems. However, according to most of the existing works, GLCM is computed by the whole image, which likely misses some important features in local areas. To solve this problem, this paper presents a new method based on the GLCM features extruded from three image blocks, and a weight-based k-nearest neighbor (KNN) search algorithm used for classifier design. With this method, a butterfly classification system works on ten butterfly species which are hard to identify by shape features. The final identification accuracy is 98%.
中图分类号:
XUE Ankang (薛安康), LI Fan* (李凡), XIONG Yin (熊吟). Automatic Identification of Butterfly Species Based on Gray-Level Co-occurrence Matrix Features of Image Block[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(2): 220-225.
XUE Ankang (薛安康), LI Fan* (李凡), XIONG Yin (熊吟). Automatic Identification of Butterfly Species Based on Gray-Level Co-occurrence Matrix Features of Image Block[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(2): 220-225.
[1] | ZHOU Y. Monographia rhopalocerorum sinensium[M]. Zhengzhou, China: Henan Science and TechnologyPress, 1994 (in Chinese). |
[2] | GASTON K J, O’NEILL M A. Automated speciesidentification: Why not? [J]. Philosophical Transactionsof The Royal Society B, Biological Sciences, 2004,359(1444): 655-667. |
[3] | GASTON K J, MAY R M. Taxonomy of taxonomists[J]. Nature, 1992, 356: 281-282. |
[4] | WEEKS P J D, O’NEILL M A, GASTON K J, et al.Species-identification of wasps using principal componentassociative memories [J]. Image and Vison Computing,1999, 17(12): 861-966. |
[5] | WEEKS P J D, O’NEILL M A, GASTON K J, et al.Automating insect identification: Exploring the limitationsof a prototype system [J]. Journal of AppliedEntomology, 2010, 123(1): 1-8. |
[6] | HOPKINS G W, FRECKLETON R P. Declines in thenumbers of amateur and professional taxonomists: Implicationsfor conservation [J]. Animal Conservation,2010, 5(3): 245-249. |
[7] | ARBUCKLE B, SCHR¨OEDER S, STEINHAGE V,et al. Biodiversity informatics in action: Identificationand monitoring of bee species using ABIS[C]//Proceedings of 15th International Symposium Informaticsfor Environment Protection. Marburg, Germany:Metropolis Verlag, 2001: 425-430. |
[8] | YAO Q, LV J, LIU Q J, et al. An insect imaging systemto automate rice light-trap pest identification [J].Journal of Integrative Agriculture, 2012, 11(6): 978-985. |
[9] | KAYA Y, KAYCI L. Application of artificial neuralnetwork for automatic detection of butterfly speciesusing color and texture features [J]. Visual Computer,2014, 30(1): 71-79. |
[10] | KANG S H, CHO J H, LEE S H. Identification of butterflybased on their shapes when viewed from differentangles using an artificial neural network [J]. Journal ofAsia-Pacific Entomology, 2014, 17(2): 143-149. |
[11] | WANG J N, JI L Q, LIANG A P, et al. The identificationof butterfly families using content based image retrieval[J]. Biosystems Engineering, 2012, 111(1): 24-32. |
[12] | KAYA Y, KAYCI L, TEKIN R. A computer vision systemfor the automatic identification of butterfly speciesvia Gabor-Filter-Based texture features and extremelearning machine: GF+ELM [J]. TEM Journal, 2013,2(1): 13-20. |
[13] | VANITHA R, PREMANANDA R. Content based imageretrieval using color and texture feature [J]. InternationalJournal of Advanced Technology in Engineeringand Science, 2014, 2(6): 308-318. |
[14] | HUANG K Y. Application of artificial neural networkfor detecting Phalaenopsis seedling diseases using colorand texture features [J]. Computers and Electronics inAgriculture, 2007, 57(1): 3-11. |
[15] | KANG S H, JEON W, LEE S H. Butterfly speciesidentification by branch length similarity entropy [J].Journal of Asia-Pacific Entomology, 2012, 15(3): 437-441. |
[16] | LI H F, CHAI Y, LI Z F. A new fusion scheme for multifocusimages based on focused pixels detection [J].Machine Vision and Applications, 2013, 24(6): 1167-1181. |
[17] | LI H F, LIU X K, YU Z T, et al. Performance improvementscheme of multifocus image fusion derivedby difference images [J]. Signal Processing, 2016, 128:474-493. |
[18] | LI H F, LI X S, YU Z T, et al. Multifocus image fusionby combining with mixed-order structure tensorsand multiscale neighborhood [J]. Information Sciences,2016, 349: 25-49. |
[19] | LI H F, YU Z T, MAO C L. Fractional differentialand variational method for image fusion and superresolution[J]. Neurocomputing, 2016, 171: 138-148. |
[20] | LI H F, QIU H M, YU Z T, et al. Multifocus imagefusion via fixed window technique of multiscale imagesand non-local means filtering [J]. Signal Processing,2017, 138: 71-85. |
[1] | . [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(6): 757-767. |
[2] | . [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(2): 190-201. |
[3] | . [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(1): 99-111. |
[4] | . [J]. J Shanghai Jiaotong Univ Sci, 2021, 26(5): 577-586. |
[5] | . [J]. J Shanghai Jiaotong Univ Sci, 2021, 26(5): 587-597. |
[6] | ZHAN Zhu (占竹), ZHANG Wenjun (张文俊), CHEN Xia (陈霞), WANG Jun (汪军) . Objective Evaluation of Fabric Flatness Grade Based on Convolutional Neural Network[J]. J Shanghai Jiaotong Univ Sci, 2021, 26(4): 503-510. |
[7] | XU Jiangchang (许江长), HE Shamin (何莎敏), YU Dedong (于德栋), WU Yiqun (吴轶群), CHEN Xiaojun, (陈晓军). Automatic Segmentation Method for Cone-Beam Computed Tomography Image of the Bone Graft Region within Maxillary Sinus Based on the Atrous Spatial Pyramid Convolution Network[J]. J Shanghai Jiaotong Univ Sci, 2021, 26(3): 298-305. |
[8] | ZHANG Yue (张月), LIU Shijie (刘世界), LI Chunlai (李春来), WANG Jianyu (王建宇). Rethinking the Dice Loss for Deep Learning Lesion Segmentation in Medical Images[J]. J Shanghai Jiaotong Univ Sci, 2021, 26(1): 93-102. |
[9] | WU Jin, MIN Yu, YANG Xiaodie, MA Simin . Micro-Expression Recognition Algorithm Based on Information Entropy Feature[J]. Journal of Shanghai Jiao Tong University(Science), 2020, 25(5): 589-599. |
[10] | LIU Min, DENG Bin, TANG Ying, WU Minghu, WANG Juan . Low-Cost Approach for Improving Video Transmission Efficiency in WVSN[J]. Journal of Shanghai Jiao Tong University(Science), 2020, 25(5): 600-605. |
[11] | WANG Yuzong (王毓综), DENG Fei (邓飞), ZHAO Daxu (赵大旭), YE Jiaying (叶佳英), WANG Peixin. Monocular Dynamic Machine Vision-Based Pearl Shape Detection[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(5): 654-662. |
[12] | LI Dan (李丹), NIU Zhongbin (牛中彬), PENG Dongxu (彭冬旭) . Magnetic Tile Surface Defect Detection Based on Texture Feature Clustering[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(5): 663-670. |
[13] | ZHOU Jingmei *(周经美), ZHAO Xiangmo (赵祥模), CHENG Xin (程鑫), XU Zhigang (徐志刚), ZHAO. Vehicle Ego-Localization Based on Streetscape Image Database Under Blind Area of Global Positioning System[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(1): 122-129. |
[14] | MA Jin (马进), XUE Teng (薛腾), SHAO Quanquan (邵全全), HU Jie (胡洁), WANG Weiming (王伟明. Research on Spatially Adaptive High-Order Total Variation Model for Weak Fluorescence Image Restoration[J]. Journal of Shanghai Jiao Tong University (Science), 2018, 23(Sup. 1): 1-7. |
[15] | ZHANG Yanghao (张洋豪), ZENG Shaoning (曾少宁), ZENG Wei (曾威), GOU Jianping (苟建平). GNN-CRC: Discriminative Collaborative Representation-Based Classification via Gabor Wavelet Transformation and Nearest Neighbor [J]. Journal of Shanghai Jiao Tong University (Science), 2018, 23(5): 657-665. |
阅读次数 | ||||||
全文 |
|
|||||
摘要 |
|
|||||