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Detection Performance Evaluation of Boosted Random Ferns

机译:增强随机蕨的检测性能评价

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We present an experimental evaluation of Boosted Random Ferns in terms of the detection performance and the training data. We show that adding an iterative bootstrapping phase during the learning of the object classifier, it increases its detection rates given that additional positive and negative samples are collected (bootstrapped) for retraining the boosted classifier. After each bootstrapping iteration, the learning algorithm is concentrated on computing more discriminative and robust features (Random Ferns), since the bootstrapped samples extend the training data with more difficult images. The resulting classifier has been validated in two different object datasets, yielding successful detections rates in spite of challenging image conditions such as lighting changes, mild occlusions and cluttered background.
机译:我们在检测性能和训练数据方面提出了增强随机蕨类植物的实验评估。我们显示,在对象分类器的学习过程中添加迭代自举阶段,鉴于收集了额外的正样本和负样本(自举)以重新训练提升的分类器,它增加了其检测率。在每次自举迭代之后,由于自举样本将训练数据扩展为具有更困难的图像,因此学习算法将专注于计算更具判别力和鲁棒性的功能(Random Ferns)。所得分类器已经在两个不同的对象数据集中进行了验证,尽管挑战性的图像条件(例如光照变化,轻微的遮挡和背景混乱)仍能产生成功的检测率。

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