计算机科学
蓟马
人工智能
马氏距离
有害生物分析
计算复杂性理论
西花蓟马
鉴定(生物学)
温室
蓟马科
分割
计算机视觉
模式识别(心理学)
生物
生态学
算法
农学
植物
作者
Chunlei Xia,Tae‐Soo Chon,Zongming Ren,Jang-Myung Lee
标识
DOI:10.1016/j.ecoinf.2014.09.006
摘要
We propose an automatic pest identification method suitable for large scale, long term monitoring for mobile or embedded devices in situ with less computational cost. A procedure of segmentation and image separation was devised to identify common greenhouse pests, whiteflies, aphid and thrips. Initially, the watershed algorithm was used to segment insects from the background (i.e., sticky trap) images. Color feature of the insects were subsequently extracted by Mahalanobis distance for identification of pest species. Accuracy and computational costs were evaluated across different image resolutions. The correlation of determination (R2) between the proposed identification scheme and manual identification were high, showing 0.934 for whitefly, 0.925 for thrips, and 0.945 for aphids even with low resolution images. Comparing with the conventional methods, pests were efficiently identified with low computational cost. Optimal image resolution for species identification regarding long-term survey was discussed in practical aspect with less computational complexity.
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