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Instance-Level Segmentation for Autonomous Driving with Deep Densely Connected MRFs

机译:深度密集连接的MRF进行自动驾驶的实例级细分

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Our aim is to provide a pixel-wise instance-level labeling of a monocular image in the context of autonomous driving. We build on recent work [32] that trained a convolutional neural net to predict instance labeling in local image patches, extracted exhaustively in a stride from an image. A simple Markov random field model using several heuristics was then proposed in [32] to derive a globally consistent instance labeling of the image. In this paper, we formulate the global labeling problem with a novel densely connected Markov random field and show how to encode various intuitive potentials in a way that is amenable to efficient mean field inference [15]. Our potentials encode the compatibility between the global labeling and the patch-level predictions, contrast-sensitive smoothness as well as the fact that separate regions form different instances. Our experiments on the challenging KITTI benchmark [8] demonstrate that our method achieves a significant performance boost over the baseline [32].
机译:我们的目标是在自动驾驶的情况下提供单眼图像的逐像素实例级别标记。我们以最近的工作[32]为基础,该工作训练了卷积神经网络以预测局部图像块中的实例标记,并从图像中大步提取。然后,在[32]中提出了一种使用几种启发式方法的简单马尔可夫随机场模型,以得出图像的全局一致实例标记。在本文中,我们用一种新型的紧密连接的马尔可夫随机场来公式化全局标记问题,并展示如何以一种适合有效平均场推断的方式编码各种直观的势能[15]。我们的潜力编码了全局标记和补丁级别预测之间的兼容性,对对比度敏感的平滑度以及各个区域形成不同实例的事实。我们在具有挑战性的KITTI基准测试[8]上进行的实验表明,我们的方法相对于基准线[32]具有显着的性能提升。

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