多类增强随机蕨类植物适应一个通用的对象检测器到一个特定的视频

Pramod Sharma, R. Nevatia
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引用次数: 6

摘要

检测器自适应是一个具有挑战性的问题,近年来提出了几种方法。我们提出了多类增强随机蕨类植物来适应检测器。首先采用无监督的方式采集在线样本,采集到的在线阳性样本根据物体的不同姿态进行分类。然后我们训练了一个多类增强随机蕨类自适应分类器。我们的自适应分类器训练主要集中在两个方面:可判别性和效率。增强提供了判别随机蕨类。为了提高效率,我们的增强过程侧重于在不同的类之间共享相同的特征,并且在单个增强框架中训练多个强分类器。在具有挑战性的公共数据集上的实验证明了我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi class boosted random ferns for adapting a generic object detector to a specific video
Detector adaptation is a challenging problem and several methods have been proposed in recent years. We propose multi class boosted random ferns for detector adaptation. First we collect online samples in an unsupervised manner and collected positive online samples are divided into different categories for different poses of the object. Then we train a multi-class boosted random fern adaptive classifier. Our adaptive classifier training focuses on two aspects: discriminability and efficiency. Boosting provides discriminative random ferns. For efficiency, our boosting procedure focuses on sharing the same feature among different classes and multiple strong classifiers are trained in a single boosting framework. Experiments on challenging public datasets demonstrate effectiveness of our approach.
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