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Semantic scene segmentation in unstructured environment with modified DeepLabV3+

机译:具有修改的deeplabv3 +的非结构化环境中的语义场景分割

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Semantic scene segmentation has become a key application in computer vision and is an essential part of intelligent transportation systems for complete scene understanding of the surrounding environment. While several methods based on deep fully Convolutional Neural Network (CNN) have been emerging, there are two main challenges: (i) They mainly focus on improvement of the accuracy than efficiency. (ii) They assume structured driving environment like in USA and Europe. While most of the current works focus on the well structured driving environment, we focus our research on India Driving Dataset (IDD) which contains data from unstructured traffic scenario. In this paper, we propose modifications in the DeepLabV3+ framework by using lower atrous rates in Atrous Spatial Pyramid Pooling (ASPP) module for dense traffic prediction. We propose to use dilated Xception network as the backbone for feature extraction. A lightweight segmentation framework is also presented by exploring the effectiveness of MobileNetV2 architecture, which achieves competitively high accuracy and is much smaller than other state-of-art architectures. The performance is evaluated in terms of mean Intersection over Union (mIoU) on 26 fine grained classes of IDD. Our proposed model with 24 M parameters achieves 68.41 mIoU on test set and efficient mobile model achieves mIoU of 61.6 by reducing the parameters to 2.2 M only. (C) 2020 Elsevier B.V. All rights reserved.
机译:语义场景分割已成为计算机愿景的关键应用,是智能交通系统的重要组成部分,以完成对周围环境的完全理解。虽然基于深度完全卷积神经网络(CNN)的几种方法已经出现,但有两个主要挑战:(i)他们主要专注于改善比效率的准确性。 (ii)他们假设在美国和欧洲这样的结构性驾驶环境。虽然当前的大多数工作都侧重于结构良好的驾驶环境,但我们将我们的研究集中在印度驾驶数据集(IDD)上,其中包含来自非结构化流量场景的数据。在本文中,我们通过使用较低的空间金字塔池(ASPP)模块来提出DEEPLABV3 +框架的修改,用于密集的交通预测。我们建议使用扩张的Xcepion网络作为特征提取的骨干。还通过探索MobileNetv2架构的有效性来介绍轻量级分割框架,这实现了竞争力的高精度,并且比其他最先进的架构要小得多。在26个细粒度的IDD上的联盟(Miou)的平均交叉口方面评估表现。我们提出的24米参数模型实现了68.41 Miou,测试集和高效的移动模型通过将参数降低到2.2米,实现了61.6的MIOU。 (c)2020 Elsevier B.v.保留所有权利。

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