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Simultaneous Semantic Segmentation and Depth Completion with Constraint of Boundary

机译:边界约束的同时语义分割和深度补全

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摘要

As the core task of scene understanding, semantic segmentation and depth completion play a vital role in lots of applications such as robot navigation, AR/VR and autonomous driving. They are responsible for parsing scenes from the angle of semantics and geometry, respectively. While great progress has been made in both tasks through deep learning technologies, few works have been done on building a joint model by deeply exploring the inner relationship of the above tasks. In this paper, semantic segmentation and depth completion are jointly considered under a multi-task learning framework. By sharing a common encoder part and introducing boundary features as inner constraints in the decoder part, the two tasks can properly share the required information from each other. An extra boundary detection sub-task is responsible for providing the boundary features and constructing cross-task joint loss functions for network training. The entire network is implemented end-to-end and evaluated with both RGB and sparse depth input. Experiments conducted on synthesized and real scene datasets show that our proposed multi-task CNN model can effectively improve the performance of every single task.
机译:作为场景理解的核心任务,语义分割和深度完成在机器人导航,AR / VR和自动驾驶等许多应用中起着至关重要的作用。它们分别负责从语义和几何角度解析场景。尽管通过深度学习技术在两项任务上都取得了长足的进步,但通过深入探索上述任务的内在联系,建立联合模型的工作却很少。本文在多任务学习框架下共同考虑了语义分割和深度完成。通过共享一个公共的编码器部分并在解码器部分中引入边界特征作为内部约束,这两个任务可以正确地彼此共享所需的信息。额外的边界检测子任务负责提供边界特征并构建用于网络训练的跨任务联合损失功能。整个网络端到端实现,并使用RGB和稀疏深度输入进行评估。对合成和真实场景数据集进行的实验表明,我们提出的多任务CNN模型可以有效地提高每个任务的性能。

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