论文标题
一种新的自动方法进行种子图像分析:从获取到细分
A new automatic approach to seed image analysis: From acquisition to segmentation
论文作者
论文摘要
图像分析提供了一种新工具,用于根据种子的形态和比色特征对血管植物物种进行分类,并在系统研究中做出了重大贡献。但是,为了提取形态学和比色特征,有必要分割包含要分析样品的图像。这个阶段是图像处理中最具挑战性的步骤之一,因为很难将统一和均匀的对象与背景区分开。在本文中,我们提出了一个新的开源插件,用于自动分割种子样本的图像。该插件是用Java编写的,以允许其使用ImageJ开源软件。对属于Fabaceae家族的120种物种的总共3,386个种子样品进行了测试。使用平板扫描仪获取数字图像。为了在识别对象的边缘并将其与背景区分开来测试这种方法的疗效,使用四种不同的蓝色色调扫描了每个样品的背景,总共详细阐述了480个数字图像。使用相同的种子样本将新插件的性能与基于双图像采集(黑色和白色背景)的方法进行了比较,其中使用Core ImageJ插件手动分割了图像。结果表明,新插件能够在没有生成任何对象检测错误的情况下对所有数字图像进行细分。此外,新插件能够平均在0.02 s的时间内将图像分割,而手动方法的平均执行时间为63 s。事实证明,这个新的开源插件能够在单个图像上工作,并且在使用大量图像和各种形状的多样性时,时间和细分效率很高。
Image Analysis offers a new tool for classifying vascular plant species based on the morphological and colorimetric features of the seeds, and has made significant contributions in systematic studies. However, in order to extract the morphological and colorimetric features, it is necessary to segment the image containing the samples to be analysed. This stage represents one of the most challenging steps in image processing, as it is difficult to separate uniform and homogeneous objects from the background. In this paper, we present a new, open source plugin for the automatic segmentation of an image of a seed sample. This plugin was written in Java to allow it to work with ImageJ open source software. The new plugin was tested on a total of 3,386 seed samples from 120 species belonging to the Fabaceae family. Digital images were acquired using a flatbed scanner. In order to test the efficacy of this approach in terms of identifying the edges of objects and separating them from the background, each sample was scanned using four different hues of blue for the background, and a total of 480 digital images were elaborated. The performance of the new plugin was compared with a method based on double image acquisition (with a black and white background) using the same seed samples, in which images were manually segmented using the Core ImageJ plugin. The results showed that the new plugin was able to segment all of the digital images without generating any object detection errors. In addition, the new plugin was able to segment images within an average of 0.02 s, while the average time for execution with the manual method was 63 s. This new open source plugin is proven to be able to work on a single image, and to be highly efficient in terms of time and segmentation when working with large numbers of images and a wide diversity of shapes.