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Joint Semantic and Motion Segmentation for Dynamic Scenes using Deep Convolutional Networks

机译:使用深度卷积网络的动态场景联合语义和运动分割

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Dynamic scene understanding is a challenging problem and motion segmentation plays a crucial role in solving it. Incorporating semantics and motion enhances the overall perception of the dynamic scene. For applications of outdoor robotic navigation, joint learning methods have not been extensively used for extracting spatio-temporal features or adding different priors into the formulation. The task becomes even more challenging without stereo information being incorporated. This paper proposes an approach to fuse semantic features and motion clues using CNNs, to address the problem of monocular semantic motion segmentation. We deduce semantic and motion labels by integrating optical flow as a constraint with semantic features into dilated convolution network. The pipeline consists of three main stages i.e Feature extraction, Feature amplification and Multi Scale Context Aggregation to fuse the semantics and flow features. Our joint formulation shows significant improvements in monocular motion segmentation over the state of the art methods on challenging KITTI tracking dataset.
机译:动态场景理解是一个具有挑战性的问题,运动分割在解决它方面发挥着至关重要的作用。包含语义和运动提高了动态场景的整体感知。对于户外机器人导航的应用,联合学习方法尚未广泛用于提取时空特征或将不同的前沿添加到配方中。如果没有结合立体声信息,任务变得更具挑战性。本文提出了一种使用CNNS的熔丝语义特征和运动线索的方法,以解决单手术语义运动分割的问题。我们通过将光流集成为具有语义特征的约束来推断语义和运动标签,以扩张的卷积网络。管道由三个主要阶段I.E特征提取,特征放大和多尺度上下文聚合组成,以保险为语义和流量功能。我们的关节配方显示了在挑战基蒂跟踪数据集上的最新方法的单眼运动细分的显着改善。

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