Selection of the Binding Object on the Current Image Formed by the Technical Vision System Using Structural and Geometric Features

O. Sotnikov, V. Sivak, Ya. Pavlov, S. Нashenko, T. Borysenko, D. Torianyk
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Abstract

The purpose of the article is to substantiate the possibility of selecting objects in the image generated by the technical vision system of an unmanned aerial vehicle by using structural and geometric features. This goal is achieved based on the analysis of the distribution of fractal dimension, which characterizes the structural properties of images, taking into account the object content, and the size of the area of the selection object. The solution to the first problem is based on the formation of histograms of fractal dimension depending on the number of objects in the image and identifying the features by which the object is selected. The solution to the second problem is based on developing an approach to reducing the object content of images by making it noisy. The noise parameters at which signs of object selection appear in the histograms of the distribution of fractal dimensions are determined. The range of fractal dimension defined. The solution to the third problem is based on specifying the selection object by its area. The most significant result is the identified values of fractal dimension ranges depending on the object content of the image, as well as experimentally established noise parameters to identify the necessary features in histograms of fractal dimensions. The significance of the work lies in solving the problem of selecting a reference object on images of heterogeneous object composition. This made it possible to significantly reduce the computational complexity of selecting objects in images.
利用结构和几何特征在技术视觉系统形成的当前图像上选择绑定对象
本文旨在证实利用结构和几何特征在无人驾驶飞行器技术视觉系统生成的图像中选择对象的可能性。这一目标是在分析分形维度分布的基础上实现的,分形维度表征了图像的结构特性,同时考虑到了对象内容和选择对象区域的大小。第一个问题的解决方法是根据图像中物体的数量形成分形维度直方图,并确定选择物体的特征。第二个问题的解决方案是开发一种方法,通过使图像变得嘈杂来减少图像中的物体内容。确定分形维度分布直方图中出现物体选择迹象的噪声参数。定义分形维度的范围。第三个问题的解决方案是通过面积来指定选择对象。最重要的成果是根据图像的对象内容确定了分形维度范围值,并通过实验确定了噪声参数,以识别分形维度直方图中的必要特征。这项工作的意义在于解决了在异质物体组成的图像上选择参考物体的问题。这使得在图像中选择物体的计算复杂度大大降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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