Boundary Detection in Images in Intelligent Systems of Autonomous Vehicles Using Wavelet Transform

S. Lyasheva, M. Shleymovich
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Abstract

“Smart city” is one of the concepts within which modern scientific and technical areas are actively developing. This concept defines the tasks associated with the organization of various infrastructure objects' continuous monitoring to optimally divide resources and ensure security. One of these tasks is to ensure road safety involving autonomous vehicles. The solution to this problem involves various technologies, including computer vision technologies. One of the approaches in this area is based on machine learning methods. These methods consider objects models in images represented as attribute vectors. Boundary attributes are often used here. The formation of these attribute comes down to two steps ─ the boundaries detection and their description in the form of descriptors. This paper describes an approach to the objects' boundaries detection in images in intelligent systems of autonomous vehicles, which is based on the use of wavelet transform. The method is based on determining the significance of the brightness change magnitude at some point at a certain level of the wavelet decomposition. For that, it is necessary to evaluate the contribution to the total image energy of the detailed coefficients corresponding to this point. The method determines the sequential refinement of boundaries, which is as follows: as the brightnesses of the original image's copies at different levels are interconnected, we assume that the boundary points at different levels correspond to each other. The proposed method is simple to implement, has a relatively high speed and the ability to flexibly configure for real operating conditions.
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基于小波变换的自动驾驶智能系统图像边界检测
“智慧城市”是现代科技领域积极发展的概念之一。该概念定义了与组织各种基础设施对象的持续监控相关的任务,以优化资源分配并确保安全性。其中一项任务是确保自动驾驶汽车的道路安全。这个问题的解决涉及到各种技术,包括计算机视觉技术。该领域的一种方法是基于机器学习方法。这些方法将图像中的对象模型表示为属性向量。这里经常使用边界属性。这些属性的形成分为两个步骤:边界检测和描述符形式的描述。本文介绍了一种基于小波变换的自动驾驶汽车智能系统图像中物体边界检测方法。该方法基于确定小波分解某一层次上某一点亮度变化幅度的显著性。为此,有必要计算该点对应的详细系数对图像总能量的贡献。该方法确定了边界的顺序细化,具体如下:由于不同层次的原始图像副本的亮度是相互关联的,我们假设不同层次的边界点是相互对应的。该方法实现简单,具有较高的速度和灵活配置实际操作条件的能力。
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