A probabilistic, multivariate approach for object recognition in thermal infra-red images

David Spulak, Richard Otrebski, W. Kubinger
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Abstract

For any task that autonomous vehicles may encounter in unstructured outdoor environments a reliable vision system is a key point for success. That is especially true with an autonomous convoy, where each vehicle has to track and follow the one in front. When applying a multivariate based approach for object detection, dimensional reduction of processed data is a vital part of any algorithm. Based on probabilistic classification into two classes (positive and negative) three different approaches for dimensional reduction are examined in this paper: The first method transforms new images in two reduced principal component analysis (PCA) spaces, derived from negative and positive training images respectively. The second approach calculates a mutual PCA space from all training images and the third strategy uses linear discriminant analysis (LDA) for data reduction. In these reduced spaces image classification is done with the Gaussian classifier. Through experiments it is shown that classification in the mutual PCA and the LDA space result in fewer errors and a more reliable class assignment. Furthermore, the use of LDA is more robust if confronted with incomplete training data. Finally it is shown that a confidence approximation using Gaussian processes can, if trained, identify positive and negative images and evaluates untrained images with the appropriate uncertainty.
热红外图像中目标识别的一种概率多变量方法
对于自动驾驶汽车在非结构化的户外环境中可能遇到的任何任务,可靠的视觉系统是成功的关键。对于自动驾驶车队来说尤其如此,每辆车都必须跟踪和跟随前面的车。当应用基于多变量的方法进行目标检测时,处理数据的降维是任何算法的重要组成部分。本文在概率分类为正负两类的基础上,研究了三种不同的降维方法:第一种方法分别从负和正训练图像中导出两个主成分分析(PCA)空间,对新图像进行变换。第二种方法是从所有训练图像中计算一个互PCA空间,第三种策略使用线性判别分析(LDA)进行数据约简。在这些约简空间中,使用高斯分类器进行图像分类。实验表明,在互PCA和LDA空间中进行分类,误差更小,分类分配更可靠。此外,如果面对不完整的训练数据,LDA的使用更具鲁棒性。最后表明,如果经过训练,使用高斯过程的置信度近似可以识别正面和负面图像,并以适当的不确定性评估未经训练的图像。
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