论文标题
RICS:用于协调体积对象的2D自批量图
RiCS: A 2D Self-Occlusion Map for Harmonizing Volumetric Objects
论文作者
论文摘要
在计算机视觉中取得了巨大的成功,并深入学习。尽管这种突破表现出强大的表现,但在学习深入知识(例如遮挡或预测身体互动)方面仍然存在许多挑战。尽管最近的一些作品显示了3D数据在服务这种情况下的潜力,但由于维度在2D和3D之间的差异不一致,我们如何有效地向2D模型提供3D输入。为了利用2D模型在预测自我周期中的成功,我们在相机空间(RICS)中设计了射线建设,这是一种新方法,是将3D中前景对象的自我估计值表示为2D自clusion映射。我们通过预测与给定背景图像相干的阴影来测试表示对人类图像协调任务的有效性。我们的实验表明,我们的表示图不仅允许我们增强图像质量,而且可以在定量和定性上与仿真到现实和协调方法相比,与临时相干的复杂阴影效应建模。我们进一步表明,我们可以通过提高与我们的方法的协调质量来显着提高在现有合成数据集接受培训的人类零件细分网络的性能。
There have been remarkable successes in computer vision with deep learning. While such breakthroughs show robust performance, there have still been many challenges in learning in-depth knowledge, like occlusion or predicting physical interactions. Although some recent works show the potential of 3D data in serving such context, it is unclear how we efficiently provide 3D input to the 2D models due to the misalignment in dimensionality between 2D and 3D. To leverage the successes of 2D models in predicting self-occlusions, we design Ray-marching in Camera Space (RiCS), a new method to represent the self-occlusions of foreground objects in 3D into a 2D self-occlusion map. We test the effectiveness of our representation on the human image harmonization task by predicting shading that is coherent with a given background image. Our experiments demonstrate that our representation map not only allows us to enhance the image quality but also to model temporally coherent complex shadow effects compared with the simulation-to-real and harmonization methods, both quantitatively and qualitatively. We further show that we can significantly improve the performance of human parts segmentation networks trained on existing synthetic datasets by enhancing the harmonization quality with our method.