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A Novel Statistical Method for Scene Classification Based on Multi-Object Categorization and Logistic Regression

机译:一种基于多对象分类和逻辑回归的场景分类的新颖统计方法

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摘要

In recent years, interest in scene classification of different indoor-outdoor scene images has increased due to major developments in visual sensor techniques. Scene classification has been demonstrated to be an efficient method for environmental observations but it is a challenging task considering the complexity of multiple objects in scenery images. These images include a combination of different properties and objects i.e., (color, text, and regions) and they are classified on the basis of optimal features. In this paper, an efficient multiclass objects categorization method is proposed for the indoor-outdoor scene classification of scenery images using benchmark datasets. We illustrate two improved methods, fuzzy c-mean and mean shift algorithms, which infer multiple object segmentation in complex images. Multiple object categorization is achieved through multiple kernel learning (MKL), which considers local descriptors and signatures of regions. The relations between multiple objects are then examined by intersection over union algorithm. Finally, scene classification is achieved by using Multi-class Logistic Regression (McLR). Experimental evaluation demonstrated that our scene classification method is superior compared to other conventional methods, especially when dealing with complex images. Our system should be applicable in various domains such as drone targeting, autonomous driving, Global positioning systems, robotics and tourist guide applications.
机译:近年来,由于视觉传感器技术的主要发展,对不同室外场景图像的场景分类的兴趣增加。已经证明场景分类是一种有效的环境观测方法,但考虑到风景图像中多个对象的复杂性是一个具有挑战性的任务。这些图像包括不同属性和对象的组合,即(颜色,文本和区域),并且它们是基于最佳特征的分类。在本文中,提出了一种使用基准数据集的风景图像室外场景分类的有效的多种多数对象分类方法。我们说明了两个改进的方法,模糊C均值和平均移位算法,其在复杂图像中推断多个对象分段。通过多个内核学习(MKL)来实现多个对象分类,这考虑了本地描述符和区域的签名。然后通过联盟算法的交叉检查检查多个对象之间的关系。最后,通过使用多类逻辑回归(MCLR)来实现场景分类。实验评估表明,与其他传统方法相比,我们的场景分类方法优越,特别是在处理复杂图像时。我们的系统应适用于各种领域,如无人机瞄准,自动驾驶,全球定位系统,机器人和旅游指南应用。

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