球面神经网络在环视鱼眼图像语义分割中的比较

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Anam Manzoor;Reenu Mohandas;Anthony Scanlan;Eoin Martino Grua;Fiachra Collins;Ganesh Sistu;Ciarán Eising
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引用次数: 0

摘要

汽车行业通过先进的计算机视觉技术在提高道路安全性和实现自动驾驶功能方面取得了重大进展。这对于短程车辆自动化来说尤其如此,因为非线性鱼眼相机通常被使用。然而,这些相机受到光学畸变的挑战,称为鱼眼几何畸变,这会导致图像内的物体变形和显着的像素畸变,特别是在图像外围。基于鱼眼图像和球形图像至少在表面上表现出相似的几何特征的观察,我们研究了球形模型-包括球面卷积神经网络(cnn)和球面视觉变压器(ViTs) -对鱼眼图像的适用性,即使鱼眼图像不是真正的球形。我们使用自动驾驶场景下的鱼眼数据集(woodscape、SynWoodscape和syncityscape)进行比较,特别关注球形方法(球面cnn和ViTs)管理鱼眼扭曲的能力,并将它们与传统的非球形方法进行比较。我们的研究结果表明,球面方法有效地解决了鱼眼畸变,而不需要额外的数据增强。与其他现代的鱼眼语义分割方法相比,这种方法可以获得更好的平均交联(mIoU)分数、像素精度和更好的环视感知。然而,我们也发现,与非球形模型相比,球形方法更倾向于过拟合较小的数据集。这些进步突出了非线性相机图像如何通过球面模型在自动驾驶中利用球面近似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Spherical Neural Networks for Surround-View Fisheye Image Semantic Segmentation
Please check and confirm whether the authors affiliation in the first The automotive industry has made significant strides in enhancing road safety and enabling automated driving features through advanced computer vision techniques. This is particularly true for short-range vehicle automation, where non-linear fisheye cameras are commonly used. However, these cameras are challenged by optical distortions, known as fisheye geometric distortions, which lead to object deformation within the image and significant pixel distortion, particularly at the image periphery. Based on the observation that fisheye and spherical images exhibit at least superficially similar geometric characteristics, we investigate the applicability of spherical models—including Spherical Convolutional Neural Networks (CNNs) and Spherical Vision Transformers (ViTs)—to fisheye images, even though fisheye images are not truly spherical. We perform our comparison using fisheye datasets—Woodscape, SynWoodscape, and SynCityscapes in autonomous driving scenarios, with a specific focus on the ability of spherical methods (Spherical CNNs and ViTs) to manage fisheye distortions and compared them against traditional non-spherical methods. Our findings indicate that spherical methods effectively address fisheye distortions without needing extra data augmentations. This results in better mean Intersection over Union (mIoU) scores, pixel accuracy, and better surround-view perception than other modern approaches for fisheye semantic segmentation. However, we also find that spherical methods have a greater tendency to overfit smaller datasets compared with non-spherical models. These advancements highlight how non-linear camera images can take advantage of spherical approximations through spherical models in autonomous driving.
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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