A vehicle detection system based on Haar and Triangle features

A. Haselhoff, A. Kummert
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引用次数: 82

Abstract

In recent years, the Viola and Jones rapid object detection approach became very popular. One aspect why this approach achieved acceptance is the numerical efficient computation of the Haar-like features on basis of the integral image. This efficiency is essential for sliding window techniques, where features have to be extracted for huge amounts of data. The main contribution of this paper is an efficient method to compute Triangle filters for feature extraction based on four integral images. The 2D Triangle filters are derived from 1D Bartlett functions. A comparison of Haar-like filters and the new Triangle filters is given by means of empirical results. The receiver operator characteristics reveal the superiority of the Triangle filters. Furthermore a vehicle detection system is described where the Triangle features are integrated. The system is based on a cascade of boosted classifiers, Haar and Triangle features, an adaptive sliding window and finally a Kalman filter.
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基于Haar和Triangle特征的车辆检测系统
近年来,Viola和Jones的快速目标检测方法变得非常流行。该方法获得认可的一个方面是基于积分图像的haar样特征的数值高效计算。这种效率对于滑动窗口技术至关重要,因为滑动窗口技术需要提取大量数据的特征。本文的主要贡献是基于四幅积分图像的特征提取中三角滤波器的有效计算方法。二维三角形滤波器由一维Bartlett函数推导而来。通过实验结果对哈尔滤波器和新型三角滤波器进行了比较。接收机算子的特性揭示了三角滤波器的优越性。此外,还描述了一种集成三角特征的车辆检测系统。该系统基于一系列增强分类器、哈尔和三角特征、自适应滑动窗口和卡尔曼滤波器。
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