Building Facades to Normal Maps: Adversarial Learning from Single View Images

Mukul Khanna, Tanu Sharma, Ayyappa Swamy Thatavarthy, K. Krishna
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引用次数: 2

Abstract

Surface normal estimation is an essential component of several computer and robot vision pipelines. While this problem has been extensively studied, most approaches are geared towards indoor scenes and often rely on multiple modalities (depth, multiple views) for accurate estimation of normal maps. Outdoor scenes pose a greater challenge as they exhibit significant lighting variation, often contain occluders, and structures like building facades are often ridden with numerous windows and protrusions. Conventional supervised learning schemes excel in indoor scenes, but do not exhibit competitive performance when trained and deployed in outdoor environments. Furthermore, they involve complex network architectures and require many more trainable parameters. To tackle these challenges, we present an adversarial learning scheme that regularizes the output normal maps from a neural network to appear more realistic, by using a small number of precisely annotated examples. Our method presents a lightweight and simpler architecture, while improving performance by at least 1.5x across most metrics. We evaluate our approaches against the state-of-the-art on normal map estimation, on a synthetic and a real outdoor dataset, and observe significant performance enhancements.
建筑立面到法线贴图:从单视图图像的对抗性学习
表面法向估计是许多计算机和机器人视觉管道的重要组成部分。虽然这个问题已经得到了广泛的研究,但大多数方法都是针对室内场景的,并且通常依赖于多种模式(深度,多视图)来准确估计法线贴图。户外场景带来了更大的挑战,因为它们表现出明显的照明变化,通常包含遮挡物,建筑立面等结构通常有许多窗户和突出物。传统的监督学习方案在室内场景中表现出色,但在室外环境中训练和部署时却表现不佳。此外,它们涉及复杂的网络架构,需要更多的可训练参数。为了解决这些挑战,我们提出了一种对抗性学习方案,该方案通过使用少量精确注释的示例,将神经网络的输出法线映射规范化,使其看起来更真实。我们的方法提供了一个轻量级和更简单的架构,同时在大多数指标上提高了至少1.5倍的性能。我们针对最先进的法线贴图估计、合成和真实的室外数据集评估了我们的方法,并观察到显著的性能增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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