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A study of the effect of noise and occlusion on the accuracy of convolutional neural networks applied to 3D object recognition

机译:噪声和遮挡对卷积神经网络应用于3D目标识别的准确性的影响研究

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摘要

In this work, we carry out a study of the effect of adverse conditions, which characterize real-world scenes, on the accuracy of a Convolutional Neural Network applied to 3D object class recognition. Firstly, we discuss possible ways of representing 3D data to feed the network. In addition, we propose a set of representations to be tested. Those representations consist of a grid-like structure (fixed and adaptive) and a measure for the occupancy of each cell of the grid (binary and normalized point density). After that, we propose and implement a Convolutional Neural Network for 3D object recognition using Caffe. At last, we carry out an in-depth study of the performance of the network over a 3D CAD model dataset, the Princeton ModelNet project, synthetically simulating occlusions and noise models featured by common RGB-D sensors. The results show that the volumetric representations for 3D data play a key role on the recognition process and Convolutional Neural Network can be considerably robust to noise and occlusions if a proper representation is chosen.
机译:在这项工作中,我们对表征真实世界场景的不利条件的影响进行了研究,该不利条件对应用于3D对象类识别的卷积神经网络的准确性产生了影响。首先,我们讨论表示3D数据以馈送网络的可能方式。此外,我们提出了一组要测试的表示形式。这些表示包括一个类似网格的结构(固定的和自适应的)和一个度量每个网格单元的占用率(二进制和归一化点密度)的方法。之后,我们提出并实现了使用Caffe进行3D对象识别的卷积神经网络。最后,我们在3D CAD模型数据集,Princeton ModelNet项目上深入研究了网络的性能,综合模拟了常见RGB-D传感器所具有的遮挡和噪声模型。结果表明,3D数据的体积表示在识别过程中起着关键作用,如果选择合适的表示,则卷积神经网络对于噪声和遮挡具有相当强的鲁棒性。

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