生物目标检测、识别和测量自动化过程信息系统

Yury Megel, A. Kutsenko, I. Blagov, S. Kovalenko, S. Kovalenko, Maksym Malko, A. Rybalka
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引用次数: 2

摘要

本文简要介绍了在计算机视觉系统框架下生物物体物理参数的检测、估计和测量的现有方法,并提出了新的方法。该目标检测方法基于两阶段算法:第一阶段,使用边缘检测算法确定目标的近似位置;在第二阶段,通过创建图形原语来构建对象的图形模型。提出了一种以生物对象的颜色为参数构造图形原语的算法。第二阶段的存在可以显著减少假阳性和假阴性结果。为了实现所提出的模型,进行了理论研究和实际实验。在实验过程中,发现所提出的方法可以提高确定生物物体的准确性,因为它适用于彩色图像,因此使用了数字颜色通道的范围。此外,考虑到颜色范围的图形原语的构建使得估计生物对象的物理特性成为可能。提出的两阶段生物目标自动定位技术,为解决点照射紫外和低频激光装置的定位问题提供了可能。在生物对象上构造图形原语阶段的算法的存在使得估计动物的肥胖程度成为可能,这是确定其健康状态的组成部分之一,并且可以成为非接触确定动物体重的自动系统的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information System for Automating Processes of Biological Objects Detection, Recognition, and Measurement
The article briefly describes the existing and proposes novel approaches to the detection, estimation of the number and measurement of physical parameters of biological objects in the frames of computer vision systems. The object detection method is based on a two-stage algorithm: at the first stage, the approximate position of the object is determined using edge detection algorithms; at the second stage, graphic models of the object are built by creating graphical primitives. An algorithm for constructing graphical primitives is developed using the color of a biological object as a parameter. The presence of the second stage can significantly reduce both false positive and false negative results. To implement the presented model theoretical studies and practical experiments are carried out. During experiments, it was revealed that the proposed approach allows increasing the accuracy of determining biological objects, since it works with a color image and, accordingly, uses the ranges of digital color channels. In addition, the construction of graphical primitives, taking into account color ranges, makes it possible to estimate the physical characteristics of a biological object. The proposed two-stage technique for the automatic determination of biological objects makes it possible to solve the problems of positioning ultraviolet and low-frequency laser devices for point irradiation. The presence in the algorithm of the stage of constructing graphical primitives on biological objects makes it possible to estimate the degree of fatness of the animal, which is one of the components of determining its state of health, and can be part of an automatic system for contactless determination of the animal’s weight.
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