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A 4D Light-Field Dataset and CNN Architectures for Material Recognition

机译:用于材料识别的4D光场数据集和CNN架构

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We introduce a new light-field dataset of materials, and take advantage of the recent success of deep learning to perform material recognition on the 4D light-field. Our dataset contains 12 material categories, each with 100 images taken with a Lytro Ilium, from which we extract about 30,000 patches in total. To the best of our knowledge, this is the first mid-size dataset for light-field images. Our main goal is to investigate whether the additional information in a light-field (such as multiple sub-aperture views and view-dependent reflectance effects) can aid material recognition. Since recognition networks have not been trained on 4D images before, we propose and compare several novel CNN architectures to train on light-field images. In our experiments, the best performing CNN architecture achieves a 7% boost compared with 2D image classification (70% → 77%). These results constitute important baselines that can spur further research in the use of CNNs for light-field applications. Upon publication, our dataset also enables other novel applications of light-fields, including object detection, image segmentation and view interpolation.
机译:我们引入了一个新的材料光场数据集,并利用了深度学习的最新成功来对4D光场进行材料识别。我们的数据集包含12个材料类别,每个类别都包含用Lytro Ilium拍摄的100张图像,我们总共从中提取了大约30,000个色块。据我们所知,这是光场图像的第一个中型数据集。我们的主要目标是研究光场中的其他信息(例如多个子孔径视图和与视图相关的反射效果)是否可以帮助材料识别。由于之前尚未对识别网络进行4D图像训练,因此我们提出并比较了几种新颖的CNN架构来对光场图像进行训练。在我们的实验中,与2D图像分类(70%→77%)相比,性能最佳的CNN架构实现了7%的提升。这些结果构成了重要的基准,可以刺激在光场应用中使用CNN的进一步研究。发布后,我们的数据集还可以实现光场的其他新颖应用,包括对象检测,图像分割和视图插值。

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