实时从分类到个体——一种统一的提升方法

David Hall, P. Perona
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引用次数: 9

摘要

提出了一种在线实时学习单目标检测器的方法。从预训练的增强类别检测器开始,以接近零的计算成本训练个体对象检测器。单个检测器通过使用与类别检测器相同的特征级联以及对弱分类器阈值的基本操作来获得。这是理想的在线操作视频流或互动学习。该技术解决的应用是重新识别和个人跟踪。在四个具有挑战性的行人和人脸数据集上的实验表明,我们的分类器确实可以实时学习身份分类器,除了训练速度更快之外,我们的分类器在两个数据集上的检测率比以前的方法更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Categories to Individuals in Real Time -- A Unified Boosting Approach
A method for online, real-time learning of individual-object detectors is presented. Starting with a pre-trained boosted category detector, an individual-object detector is trained with near-zero computational cost. The individual detector is obtained by using the same feature cascade as the category detector along with elementary manipulations of the thresholds of the weak classifiers. This is ideal for online operation on a video stream or for interactive learning. Applications addressed by this technique are reidentification and individual tracking. Experiments on four challenging pedestrian and face datasets indicate that it is indeed possible to learn identity classifiers in real-time, besides being faster-trained, our classifier has better detection rates than previous methods on two of the datasets.
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