基于CT和MV-UNet的小麦单粒玉米象发育过程无损检测与快速分割

Ju Gao, Ying Zhou, Yanbo Hui, Yongzhen Zhang, Qiao Wang, Juanjuan Liu, Xiaoliang Wang, Hongxiao Wang, Hao Ding, Haiyang Ding
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引用次数: 0

摘要

小麦在收获、运输和储存过程中容易发生虫害,导致高温、发霉和变质。及时检测有害生物对有效预防和提高贮藏质量至关重要。传统的人工鉴定、生物信息检测等方法存在效率低、破坏粮食、鉴定害虫幼虫困难等局限性。本研究提出了一种基于计算机断层扫描技术和Multi-feature and Vision Transformer U-Net模型的小麦内层玉米象(S. zeamais)检测方法。利用多特征提取块和残差视觉变换块对U-Net进行了增强。经过200次的训练迭代,该模型的平均交集比达到了94.4%。利用图像处理技术对玉米玉米进行分割,建立三维模型,提取体积、表面积、长度等特征。玉米螟的发育阶段:卵、早期幼虫、晚期幼虫、蛹和成虫。由表皮糜烂进入胚乳,由圆形卵期转变为柱状,然后发育出各种器官。玉米玉米的体积从卵期的0.008 ~ 0.018 mm³增加到成虫期的0.89 ~ 1.16 mm³,体长从卵期的0.176 ~ 0.284 mm增加到成虫期的2.416 ~ 2.865 mm。该方法能够准确、快速地提取和可视化玉米玉米的发育信息,为早期变异分析提供支持,提高小麦品质和病虫害防治水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nondestructive detection and rapid segmentation of the development process of Sitophilus zeamais in single wheat kernels based on CT and MV-UNet.

Wheat is prone to insect infestations during harvesting, transportation, and storage, leading to heat, mold, and deterioration. Timely pest detection is vital for effective prevention and improved storage quality. Traditional methods, such as manual identification and biological information detection, have limitations, including low efficiency, grain damage, and difficulty in identifying pest larvae. This study proposed a method for detecting Sitophilus zeamais (S. zeamais) in the interior of wheat based on computed tomography technology and the Multi-feature and Vision Transformer U-Net model. The U-Net was enhanced with the Multi-Feature Extraction block and the Residual Vision Transformer block. After 200 training iterations, the model achieved a mean Intersection over Union of 94.4%. To use image processing technology to segment S. zeamais, create 3D models, and extract features such as volume, surface area, and length. S. zeamais develops through stages: egg, early larva, late larva, pupal, and adult. From epidermal erosion into the endosperm, it transitions from a round egg stage to a columnar shape and then develops various organs. The volume of the S. zeamais increases from 0.008 to 0.018 mm³ during the egg stage to 0.89 to 1.16 mm³ in the adult stage, and its length grows from 0.176 to 0.284 mm during the egg stage to 2.416 to 2.865 mm in the adult stage. This method offers accurate, rapid extraction and visualization of S. zeamais developmental information, supporting early-stage variation analysis and enhancing wheat quality and pest control.

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