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Road scene object detection using pre-trained RGB neural networks on linear Stokes images

机译:在线性Stokes图像上使用预训练的RGB神经网络进行道路场景目标检测

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Neural networks trained on RGB and monochromatic images are tested on images augmented by polarimetry for recognition of road-based objects. The goal of this work is to understand the scene conditions for which object detection and recognition can be improved by linear Stokes measurements. Shadows, windows, low albedo, and other object features which reduce RGB image contrast also decrease neural network detection performance. This work demonstrates specific cases for which linear Stokes images increase image contrast and therefore increase object detection by a neural network. Linear Stokes videos for five difference scenes are collected at three times of day and two driving directions. Although limited in scope, this work demonstrates some enhancement to object detection by adding polarimetry to neural networks trained on RGB images.
机译:对在RGB和单色图像上训练的神经网络在通过极化仪增强的图像上进行测试,以识别基于道路的物体。这项工作的目的是了解可以通过线性Stokes测量来改善目标检测和识别的场景条件。降低RGB图像对比度的阴影,窗口,低反照率和其他对象特征也会降低神经网络检测性能。这项工作演示了线性Stokes图像增加了图像对比度并因此增加了通过神经网络进行对象检测的特定情况。在一天中的三个时间和两个行驶方向上,收集了五个不同场景的线性斯托克斯视频。尽管范围有限,但这项工作通过向在RGB图像上训练的神经网络添加极化仪,展示了对对象检测的一些增强。

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