D-ViShaDeRec:自动驾驶汽车中视频阴影的双重强度检测、去除和重新着色

Risnandar, Deeva Nabila
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引用次数: 0

摘要

在自动驾驶汽车(AV)的驾驶过程中,阴影是视觉上的障碍部分。阴影也可以作为一个物体被检测到。人们担心自动驾驶系统不能很好地工作,或者撞到其他物体。自动驾驶汽车中图像和视频阴影的检测和去除方法很多。然而,为了处理不同背景对视频阴影和物体的影响,我们需要利用多种场景对单个视频阴影进行检测、去除和语义分割。本文提出了一种新的阴影视频检测与去除方法,该方法与分割过程中的重着色方法相结合。也就是D-ViShaDeRec。我们还提出了一种新的改进的Sobel算法,其核大小为5 × 5。D-ViShaDeRec的结果分别显示,,,,,和召回率,选择性,精密度,NPV,准确性和F1-Score。
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D-ViShaDeRec: Double Intensity of Video Shadow Detection, Removal, and Re-coloring in Autonomous Vehicle
Shadows are the obstacle parts of a vision-based during the driving an autonomous vehicle (AV). The shadow also can be detected as an object. It is feared the AV’s system doesn’t well-work or hits another object. Many methods of the images and video shadow detection and removal in the AVs. However, to handle the various backgrounds on the video shadow and objects, we need to exploit many scenarios of single video shadow detection, removal, and semantic segmentation. We propose a new novelty method in the shadow video detection and removal which is combined with the re-coloring method in the segmentation process. It’s namely the D-ViShaDeRec. We also propose a new modified Sobel algorithm which has a kernel size of 5 × 5. The D-ViShaDeRec’s outcomes show , , , , , and of the recall, selectivity, precision, NPV, accuracy, and F1-Score, respectively.
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