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SERS-based immunoassay of tumor marker VEGF using DNA aptamers and silica-encapsulated hollow gold nanospheres.pdf

机译:基于SERS的DNA适体和硅胶包裹的空心金纳米球免疫测定VEGF.pdf

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摘要

We propose an in situ detection method of multiple leaves with overlapping and occlusion in greenhouse conditions. Initially a multilayer perceptron (MLP) is used to classify partial boundary images of pepper leaves. After the partial leaf boundary detection, active shape models (ASMs) are subsequently built to employ the images of entire leaves based on a priori knowledge using landmark. Two deformable models were developed with pepper leaves: Boundary-ASM and MLP-ASM. Matching processes are carried out by deforming the trained leaf models to fit real leaf images collected in the greenhouse. MLP-ASM detected 76.7 and 87.8% of overlapping and occluded pepper leaves respectively, while Boundary-ASM showed detection rates of 63.4 and 76.7%. The detection rates by the conventional ASM were 23.3 and 29.3%. The leaf models trained with pepper leaves were further tested with leaves of paprika, in the same family but with more complex shapes (e.g., holes and rolling). Although the overall detection rates were somewhat lower than those for pepper, the rates for the occluded and overlapping leaves of paprika were still higher with MLP-ASM (ranging from 60.4 to 76.7%) and Boundary-ASM (ranging from 50.5 to 63.3%) than using the conventional active shape model (from 21.6 to 30.0%). The modified active shape models with the boundary classifier could be an efficient means for detecting multiple leaves in field conditions. (c) 2013 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:我们提出了一种在温室条件下多叶重叠和遮挡的原位检测方法。最初,多层感知器(MLP)用于对辣椒叶的部分边界图像进行分类。在部分叶片边界检测之后,基于先验知识使用地标,随后建立活动形状模型(ASM)以采用整个叶片的图像。用辣椒叶开发了两个可变形模型:Boundary-ASM和MLP-ASM。通过使训练有素的叶子模型变形以适合温室中收集的真实叶子图像来进行匹配过程。 MLP-ASM分别检测到重叠和封闭的辣椒叶分别为76.7和87.8%,而Boundary-ASM的检出率为63.4和76.7%。传统ASM的检出率分别为23.3%和29.3%。用辣椒叶训练的叶子模型进一步用同一家族但形状更复杂(例如孔和卷)的辣椒粉叶子进行测试。尽管总体检出率略低于胡椒检出率,但使用MLP-ASM(从60.4%到76.7%)和Boundary-ASM(从50.5%到63.3%)的辣椒粉的遮盖和重叠叶检出率仍然更高。比使用传统的主动形状​​模型(从21.6%到30.0%)高。带有边界分类器的改进的主动形状​​模型可能是在田间条件下检测多片叶子的有效手段。 (c)2013年。由Elsevier Ltd.出版。保留所有权利。

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