Fog Classification and Accuracy Measurement Using SVM

M. Anwar, A. Khosla
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引用次数: 4

Abstract

Fog is not always homogeneous in nature. The fog density and distribution are varying in nature while capturing images through a camera or sensor. In contrast to homogeneity the fog may be treated as heterogeneous which depends upon the density variation of its constituents particles i.e water droplets. Classification is important and sometimes helpful to design a fog removal algorithm for vision enhancement while considering type of fog without knowing its density. Classification methods are applicable for both synthetic and camera images. This paper presents Support Vector Machine (SVM) that plays a key role to classify the synthetic data into two classes with accuracy measurement. Confusion matrix and Receiver Operational Characteristic (ROC) curve hold SVM to quantify the accuracy. The proposed method quantifies the type of fog with more than 92 percent accuracy for synthetically generated images containing various objects and environments in foggy situation. This acquaintance will finally help to generate a natural image dataset of homogeneous and heterogeneous foggy images.
基于支持向量机的雾分类与精度测量
雾在性质上并不总是均匀的。通过相机或传感器捕捉图像时,雾的密度和分布在本质上是不同的。与均匀性相反,雾可以被视为非均匀的,这取决于其组成粒子即水滴的密度变化。在考虑雾的类型而不知道雾的密度的情况下,分类是很重要的,有时有助于设计用于视觉增强的去雾算法。分类方法适用于合成图像和相机图像。本文提出了支持向量机(SVM),它在将合成数据分为两类并进行精度测量方面起着关键作用。混淆矩阵和接收者工作特征(ROC)曲线支持支持向量机来量化准确率。该方法对雾天条件下包含多种物体和环境的综合生成图像进行雾天类型量化,准确率超过92%。这种认识最终将有助于生成同质和异构雾图像的自然图像数据集。
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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