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Improving a deep learning based RGB-D object recognition model by ensemble learning

机译:通过集成学习改进基于深度学习的RGB-D对象识别模型

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Augmenting RGB images with depth information is a well-known method to significantly improve the recognition accuracy of object recognition models. Another method to improve the performance of visual recognition models is ensemble learning. However, this method has not been widely explored in combination with deep convolutional neural network based RGB-D object recognition models. Hence, in this paper, we form different ensembles of complementary deep convolutional neural network models, and show that this can be used to increase the recognition performance beyond existing limits. Experiments on the Washington RGB-D Object Dataset show that our best performing ensemble improves the recognition performance with 0.7% compared to using the baseline model alone.
机译:用深度信息增强RGB图像是一种众所周知的方法,可以显着提高对象识别模型的识别精度。改善视觉识别模型性能的另一种方法是集成学习。但是,这种方法尚未与基于深度卷积神经网络的RGB-D对象识别模型结合使用。因此,在本文中,我们形成了互补的深度卷积神经网络模型的不同集合,并表明该模型可用于将识别性能提高到超过现有限制的水平。在Washington RGB-D对象数据集上进行的实验表明,与仅使用基线模型相比,我们性能最好的整体将识别性能提高了0.7%。

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