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Learning people detection models from few training samples

机译:从少量训练样本中学习人的检测模型

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People detection is an important task for a wide range of applications in computer vision. State-of-the-art methods learn appearance based models requiring tedious collection and annotation of large data corpora. Also, obtaining data sets representing all relevant variations with sufficient accuracy for the intended application domain at hand is often a non-trivial task. Therefore this paper investigates how 3D shape models from computer graphics can be leveraged to ease training data generation. In particular we employ a rendering-based reshaping method in order to generate thousands of synthetic training samples from only a few persons and views. We evaluate our data generation method for two different people detection models. Our experiments on a challenging multi-view dataset indicate that the data from as few as eleven persons suffices to achieve good performance. When we additionally combine our synthetic training samples with real data we even outperform existing state-of-the-art methods.
机译:对于计算机视觉中的广泛应用,人员检测是一项重要任务。最先进的方法可以学习基于外观的模型,这些模型需要大数据语料库的繁琐收集和注释。同样,获得对于手头的预期应用领域足够准确的表示所有相关变化的数据集通常也不是一件容易的事。因此,本文研究了如何利用计算机图形学中的3D形状模型来简化训练数据的生成。特别是,我们采用基于渲染的重塑方法,以便仅从少数几个人和几个视图生成数千个综合训练样本。我们针对两种不同的人员检测模型评估我们的数据生成方法。我们在具有挑战性的多视图数据集上进行的实验表明,只有11个人的数据就足以实现良好的性能。当我们进一步将综合训练样本与真实数据相结合时,我们甚至会超越现有的最新方法。

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