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Deep fully convolutional networks with random data augmentation for enhanced generalization in road detection

机译:具有随机数据扩充功能的深层全卷积网络可增强道路检测的通用性

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In this paper, a Deep Learning system for accurate road detection is proposed using the ResNet-101 network with a fully convolutional architecture and multiple upscaling steps for image interpolation. It is demonstrated that significant generalization gains in the learning process are attained by randomly generating augmented training data using several geometric transformations and pixelwise changes, such as affine and perspective transformations, mirroring, image cropping, distortions, blur, noise, and color changes. In addition, this paper shows that the use of a 4-step upscaling strategy provides optimal learning results as compared to other similar techniques that perform data upscaling based on shallow layers with scarce representation of the scene data. The complete system is trained and tested on data from the KITTI benchmark and besides it is also tested on images recorded on the Campus of the University of Alcala (Spain). The improvement attained after performing data augmentation and conducting a number of training variants is really encouraging, showing the path to follow for enhanced learning generalization of road detection systems with a view to real deployment in self-driving cars.
机译:在本文中,提出了一种使用ResNet-101网络的,用于精确道路检测的深度学习系统,该网络具有完全卷积的体系结构和用于图像插值的多个放大步骤。事实证明,通过使用几种几何变换和逐像素变化(例如仿射和透视变换,镜像,图像裁剪,变形,模糊,噪声和颜色变化)随机生成增强的训练数据,可以在学习过程中获得显着的通用性增益。另外,本文显示,与其他类似技术相比,使用4步升迁策略可提供最佳的学习效果,而其他类似技术基于场景层的稀疏表示而基于浅层执行数据升迁。完整的系统接受了来自KITTI基准测试的数据的培训和测试,此外还经过了阿尔卡拉大学(西班牙)校园记录的图像上的测试。在执行数据增强和进行多种训练后,获得的改进确实令人鼓舞,这显示了道路检测系统的增强学习通用性以实现在自动驾驶汽车中的实际部署所遵循的道路。

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