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Methods of Enriching The Flow of Information in The Real-Time Semantic Segmentation Using Deep Neural Networks

机译:使用深神经网络丰富实时语义分割中信息流的方法

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Semantic Segmentation is one of the visual tasks that gained the significant boost in performance in recent years due to the popularization of Convolutional Neural Networks (CNNs). In this paper, we addressed the problem of losing information while changing the size of input images during training neural models. Moreover, our method of downsampling and upsampling could be easily injected into current autoencoder models. We show that without any significant changes in a model architecture it is possible to noticeably improve IoU metric. On popular Cityscapes benchmark, our model is achieving almost 2.5% boost in the accuracy of segmentation in comparison to the widely known ERF model. Additionally, to the ability to real-time usages, we run our network on GPU comparable to NVIDIA Jetson Tx2, what let us implement our algorithm in autonomous vehicles.
机译:语义分割是由于卷积神经网络(CNNS)的推广,近年来在近年来的性能显着提升的视觉任务之一。在本文中,我们解决了在训练神经模型期间改变输入图像大小而失去信息的问题。此外,我们的下采样和上采样方法可以很容易地注入到当前的AutoEncoder模型中。我们表明,没有模型架构的任何重大变化,可以明显改善IOU度量。在流行的城市景观基准测试中,我们的模型与众所周知的ERF模型相比,在分割的准确性上实现了近2.5%的提升。此外,为了实时使用的能力,我们在GPU上运行与NVIDIA Jetson TX2的GPU网络,让我们在自动车辆中实现我们的算法。

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