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A Deep Convolutional Networks for Monocular Road Segmentation *

机译:用于单眼路段的深度卷积网络*

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free space detection is a very important task in the autopilot system. In this paper, for traditional monocular RGB images, we propose an accurate road detection system based on deep convolutional networks (CNN). Compared with classification, semantic segmentation needs to predict each pixel, so it is computation expensive and hard to achieve realtime. In our road detection system, we reduce the forward time when the detection accuracy is close to other state-of-the-art algorithms. These benefits from the faster forward network we use and the Multi Detection Model we designed. Modern deep convolutional network architecture becomes wider and deeper because they can improve network performance. According to this idea, we proposed a Multi Detection Model (MDM) for applying in our road detection system. With the input of high resolution (375×1242), our network is trained end-to-end. Compared with the other state-of-the-art networks in the KITTI road detection, we shortened the calculation time when the detection accuracy was close to.
机译:自由空间检测是自动驾驶仪系统中非常重要的任务。本文为传统单眼RGB图像,我们提出了一种基于深卷积网络(CNN)的准确路线检测系统。与分类相比,语义分割需要预测每个像素,因此它是昂贵且难以实现实时的计算。在我们的道路检测系统中,我们减少了检测精度接近其他最先进的算法的前进时间。这些优势来自我们使用的更快的前向网络和我们设计的多种检测模型。现代深度卷积网络架构变得更广泛,更深入,因为它们可以提高网络性能。根据这个想法,我们提出了一种用于在我们的道路检测系统中申请的多种检测模型(MDM)。随着高分辨率的输入(375×1242),我们的网络训练了端到端。与基提道路检测中的其他最先进的网络相比,我们在检测精度接近时缩短了计算时间。

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