C. Wen and D. Guyer, Image-based orchard insect automated identification and classification method. Computers and Electronics in Agriculture, vol.89, pp.110-115, 2012.

S. Kang, J. Cho, and S. Lee, Identification of butterfly based on their shapes when viewed from different angles using an artificial neural network, Journal of Asia-Pacific Entomology, vol.17, issue.2, pp.143-149, 2014.

Y. Kaya, L. Kayci, and M. Uyar, Automatic identification of butterfly species based on local binary patterns and artificial neural network, Applied Soft Computing, vol.28, pp.132-137, 2015.

Y. Chen, X. Hu, and C. Zhang, Algorithm for segmentation of insect pest images from wheat leaves based on machine vision. transactions of the CHinese Society for Agricultural Engineering, vol.23, pp.187-191, 2007.

C. Xia, Automatic identification and counting of small size pests in greenhouse conditions with low computational cost, Ecological Informatics, vol.29, pp.139-146, 2015.

J. G. Barbedo, Using digital image processing for counting whiteflies on soybean leaves, Journal of Asia-Pacific Entomology, vol.17, issue.4, pp.685-694, 2014.

S. Zhang, Algorithm for segmentation of whitefly images based on DCT and region growing, Transactions of the Chinese Society for Agricultural Engineering, vol.29, issue.17, pp.121-128, 2013.

Y. Wang and Y. Peng, Application of watershed algorithm in image of food insects, Journal of Shandong University of Science and Technology, vol.26, issue.2, pp.79-82, 2007.

G. Weng, Monitoring population density of pests based on mathematical morphology, transactions of the CHinese Society for Agricultural Engineering, vol.24, issue.11, pp.135-138, 2008.

Q. Yao, Segmentation of touching insects based on optical flow and NCuts, Biosystems Engineering, vol.114, issue.2, pp.67-77, 2013.

Q. F. Zhong, A novel segmentation algorithm for clustered slender-particles. Computers and Electronics in Agriculture, vol.69, pp.118-127, 2009.

M. Aymen, Automatic image segmentation of nuclear stained breast tissue sections using color active contour model and an improved watershed method, Biomedical Signal Processing and Control, vol.8, issue.5, pp.421-436, 2013.

X. D. Zhang, A marker-based watershed method for X-ray image segmentation, Computer Methods and Programs in Biomedicine, vol.113, issue.3, pp.894-903, 2014.

N. Otsu, A Threshold Selection Method from Gray-Level Histograms, IEEE Transactions on Systems, Man, and Cybernetics, vol.9, issue.1, pp.62-66, 1979.

F. Lao, Recognition and conglutination separation of individual Hens Based on machine vision in complex environment, Transactions of the Chinese Society for Agricultural Machinery, vol.44, issue.4, pp.213-216, 2013.

R. Gaetano, Marker-Controlled Watershed-Based Segmentation of Multiresolution Remote Sensing Images, IEEE Transactions on Geoscience and Remote Sensing, vol.53, issue.6, pp.2987-3004, 2015.

L. Xu and H. Lu, Automatic Morphological Measurement of the Quantum Dots Based on Marker-Controlled Watershed Algorithm, IEEE Transactions on Nanotechnology, vol.12, issue.1, pp.51-56, 2013.