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Outdoor Scenes Pixel-wise Semantic Segmentation using Polarimetry and Fully Convolutional Network

机译:使用Polarimetry和全卷积网络的户外场景像素明智的语义分割

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In this paper, we propose a novel method for pixel-wise scene segmentation application using polarimetry. To address the difficulty of detecting highly reflective areas such as water and windows, we use the angle and degree of polarization of these areas, obtained by processing images from a polarimetric camera. A deep learning framework, based on encoder-decoder architecture, is used for the segmentation of regions of interest. Different methods of augmentation have been developed to obtain a sufficient amount of data, while preserving the physical properties of the polarimetric images. Moreover, we introduce a new dataset comprising both RGB and polarimetric images with manual ground truth annotations for seven different classes. Experimental results on this dataset, show that deep learning can benefit from polarimetry and obtain better segmentation results compared to RGB modality. In particular, we obtain an improvement of 38.35% and 22.92% in the accuracy for segmenting windows and cars respectively.
机译:在本文中,我们提出了一种使用偏光测量法的像素方面分割应用的新方法。为了解决诸如水和窗口的高反射区域的难度,我们使用来自偏振相机的图像而获得的这些区域的偏振程度和程度。基于编码器解码器架构的深度学习框架用于感兴趣区域的分割。已经开发出不同的增强方法来获得足够量的数据,同时保留偏振图像的物理特性。此外,我们介绍了一个新的数据集,包括RGB和Polarimetric映像,具有七种不同类的手动地理诠释。实验结果对此数据集,表明深度学习可以从偏光测量中受益,并获得与RGB的模态相比的更好的分段结果。特别是,我们分别在分段窗口和汽车的准确性获得38.35%和22.92%的提高。

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