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ScaleNet: Scale Invariant Network for Semantic Segmentation in Urban Driving Scenes

机译:ScaleNet:城市驾驶场景中的语义细分规模不变网络

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The scale difference in driving scenarios is one of the essential challenges in semantic scene segmentation. Close objects cover significantly more pixels than far objects. In this paper, we address this challenge with a scale invariant architecture. Within this architecture, we explicitly estimate the depth and adapt the pooling field size accordingly. Our model is compact and can be extended easily to other research domains. Finally, the accuracy of our approach is comparable to the state-of-the-art and superior for scale problems. We evaluate on the widely used automotive dataset Cityscapes as well as a self-recorded dataset.
机译:驾驶场景的规模差异是语义场景分割中的基本挑战之一。关闭对象覆盖范围明显比远对象更多的像素。在本文中,我们以规模不变的架构解决了这一挑战。在此架构中,我们明确估计深度并相应地调整汇集字段大小。我们的模型紧凑,可以轻松扩展到其他研究领域。最后,我们的方法的准确性与最先进的和优越的规模问题相当。我们在广泛使用的汽车数据集Citycapes以及自我录制的数据集中评估。

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