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Improving person detection using synthetic training data

机译:使用综合训练数据改善人员检测

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Person detection in complex real-world scenes is a challenging problem. State-of-the-art methods typically use supervised learning relying on significant amounts of training data to achieve good detection results. However, labeling training data is tedious, expensive, and error-prone. This paper presents a novel method to improve detection performance by supplementing real-world data with synthetically generated training data. We consider the case of detecting people in crowded scenes within an AdaBoost-framework employing Haar and Histogram-of-Oriented-Gradients (HOG) features. Our evaluations on real-world video sequences of crowded scenes with significant occlusions show that the combination of real and synthetic training data significantly improves overall detection results.
机译:在复杂的现实世界场景中进行人物检测是一个具有挑战性的问题。最先进的方法通常使用依赖大量训练数据的监督学习来获得良好的检测结果。但是,标记训练数据很繁琐,昂贵且容易出错。本文提出了一种通过用合成生成的训练数据补充现实世界数据来提高检测性能的新方法。我们考虑使用Haar和“定向梯度直方图”(HOG)功能在AdaBoost框架内检测拥挤场景中人物的情况。我们对拥挤场景中拥挤场景的真实视频序列的评估表明,真实和综合训练数据的组合可显着改善整体检测结果。

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