Deep Outdoor Illumination Estimation

Yannick Hold-Geoffroy, Kalyan Sunkavalli, Sunil Hadap, Emiliano Gambaretto, Jean-François Lalonde

2016-11-19CVPR 2017 7Outdoor Light Source Estimation

Abstract

We present a CNN-based technique to estimate high-dynamic range outdoor illumination from a single low dynamic range image. To train the CNN, we leverage a large dataset of outdoor panoramas. We fit a low-dimensional physically-based outdoor illumination model to the skies in these panoramas giving us a compact set of parameters (including sun position, atmospheric conditions, and camera parameters). We extract limited field-of-view images from the panoramas, and train a CNN with this large set of input image--output lighting parameter pairs. Given a test image, this network can be used to infer illumination parameters that can, in turn, be used to reconstruct an outdoor illumination environment map. We demonstrate that our approach allows the recovery of plausible illumination conditions and enables photorealistic virtual object insertion from a single image. An extensive evaluation on both the panorama dataset and captured HDR environment maps shows that our technique significantly outperforms previous solutions to this problem.

Results

TaskDatasetMetricValueModel
Scene ParsingSUN360Median Relighting Error1.25ÇuNNy
Scene UnderstandingSUN360Median Relighting Error1.25ÇuNNy
2D Semantic SegmentationSUN360Median Relighting Error1.25ÇuNNy

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