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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Phase congruency-based detection of circular objects applied to analysis of phytoplankton images
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Phase congruency-based detection of circular objects applied to analysis of phytoplankton images

机译:基于相位一致性的圆形物体检测在浮游植物图像分析中的应用

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摘要

Detection and recognition of objects representing the Prorocentrum minimum (P. minimum) species in phytoplankton images is the main objective of the article. The species is known to cause harmful blooms in many estuarine and coastal environments. A new technique, combining phase congruency-based detection of circular objects in images, stochastic optimization-based object contour determination, and SVM- as well as random forest (RF)-based classification of objects was developed to solve the task. A set of various features including a subset of new features computed from phase congruency preprocessed images was used to characterize extracted objects. The developed algorithms were tested using 114 images of 1280×960 pixels. There were 2088 P. minimum cells in the images in total. The algorithms were able to detect 93.25% of objects representing P. minimum cells and correctly classified 94.9% of all detected objects. The feature set used has shown considerable tolerance to out-of-focus distortions. The obtained results are rather encouraging and will be used to develop an automated system for obtaining abundance estimates of the species.
机译:本文的主要目的是检测和识别代表浮游植物图像中原原最小(P. minimum)物种的物体。已知该物种会在许多河口和沿海环境中引起有害的水华。开发了一种新技术,该技术结合了基于相位一致性的图像中圆形物体检测,基于随机优化的物体轮廓确定,基于SVM的物体分类以及基于随机森林(RF)的物体分类,从而解决了这一任务。一组各种特征(包括从相位一致性预处理图像计算出的新特征的子集)用于表征提取的对象。使用114张1280×960像素的图像对开发的算法进行了测试。图像中总共有2088个P.最小细胞。该算法能够检测到93.25%的代表最小体育假单胞菌的物体,并正确分类了所有检测到的物体的94.9%。所使用的功能集已显示出对散焦失真的相当大的容忍度。所获得的结果令人鼓舞,并将被用于开发一种自动化系统,以获取该物种的丰度估计。

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