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Learning to Estimate Indoor Lighting from 3D Objects

机译:学习根据3D对象估算室内照明

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In this work, we propose a step towards a more accurate prediction of the environment light given a single picture of a known object. To achieve this, we develop a deep learning method that is able to encode the latent space of indoor lighting using few parameters that is trained on a database of environment maps. This latent space is then used to generate predictions of the light that are both more realistic and accurate than previous methods. Our first contribution is a deep autoencoder which is capable of learning the feature space that compactly models lighting. Our second contribution is a convolutional neural network that predicts the light from a single image of a known object. To train these networks, our third contribution is a novel dataset that contains 21,000 HDR indoor environment maps. Finally, we evaluate our method on a dataset of synthetic objects and find it to outperform the state-of-the-art techniques across a variety of materials and poses.
机译:在这项工作中,我们提出了一个步骤,可以在给定已知物体的单个图片的情况下更准确地预测环境光。为了实现这一目标,我们开发了一种深度学习方法,该方法能够使用很少的参数(对环境图的数据库进行训练)来对室内照明的潜在空间进行编码。然后,使用该潜在空间来生成光的预测,该预测比以前的方法更加真实和准确。我们的第一项贡献是深层的自动编码器,它能够学习紧凑照明建模的特征空间。我们的第二个贡献是卷积神经网络,它可以从已知物体的单个图像预测光线。为了训练这些网络,我们的第三个贡献是一个新颖的数据集,其中包含21,000个HDR室内环境地图。最后,我们在合成对象的数据集上评估了我们的方法,发现它在各种材料和姿势上的表现都超过了最新技术。

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