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Selecting CNN features for online learning of 3D objects

机译:选择CNN特征,用于3D对象的在线学习

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We present a novel method for classifying 3D objects that is particularly tailored for the requirements in robotic applications. The major challenges here are the comparably small amount of available training data and the fact that often data is perceived in streams and not in fixed-size pools. Traditional state-of-the-art learning methods, however, require a large amount of training data, and their online learning capabilities are usually limited. Therefore, we propose a modality-specific selection of convolutional neural networks (CNN), pre-trained or fine-tuned, in combination with a classifier that is designed particularly for online learning from data streams, namely the Mondrian Forest (MF). We show that this combination of trained features obtained from a CNN can be improved further if a feature selection algorithm is applied. In our experiments, we use the resulting features both with a MF and a linear Support Vector Machine (SVM). With SVM we beat the state of the art on an RGB-D dataset, while with MF a strong result for active learning is achieved.
机译:我们提出了一种用于对机器人应用中的要求特别定制的3D对象进行分类的新方法。这里的主要挑战是相当少量的可用培训数据以及经常数据在溪流中感知而不是固定尺寸的池中的事实。然而,传统的最先进的学习方法需要大量的培训数据,并且其在线学习能力通常有限。因此,我们提出了一种卷积神经网络(CNN)的模型特定的选择,预先训练或微调,与专门用于从数据流的在线学习的分类器,即蒙德兰林(MF)。我们表明,如果应用特征选择算法,则可以进一步提高从CNN获得的训练特征的这种组合。在我们的实验中,我们使用MF和线性支持向量机(SVM)的产生功能。通过SVM,我们在RGB-D数据集中击败了现有技术,而MF实现了积极学习的强烈结果。

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