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LED2-Net: Monocular 360 Layout Estimation via Differentiable Depth Rendering

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Although significant progress has been made in room layout estimation, most methods aim to reduce the loss in the 2D pixel coordinate rather than exploiting the room structure in the 3D space. Towards reconstructing the room layout in 3D, we formulate the task of 360 layout estimation as a problem of predicting depth on the horizon line of a panorama. Specifically, we propose the Differentiable Depth Rendering procedure to make the conversion from layout to depth prediction differentiable, thus making our proposed model end-to-end trainable while leveraging the 3D geometric information, without the need of providing the ground truth depth. Our method achieves state-of-the-art performance on numerous 360 layout benchmark datasets. Moreover, our formulation enables a pre-training step on the depth dataset, which further improves the generalizability of our layout estimation model.

Fu-En Wang, Yu-Hsuan Yeh, Min Sun, Wei-Chen Chiu, Yi-Hsuan Tsai• 2021

Related benchmarks

TaskDatasetResultRank
Cuboid layout estimationPanoContext (test)
3D IoU82.75
68
Room Layout EstimationMatterportLayout (test)
2D IoU82.93
28
Room Layout EstimationMatterport3D official (test)
Overall 2D IoU0.8391
11
360° layout estimationStanford2D3D (test)
3D IoU83.77
11
Room Layout EstimationZInD
2DIoU (%)90.36
9
Room Layout EstimationZInd (test)
2D IoU (%)91.59
9
360° layout estimationMatterport3D
2D IoU83.91
8
360° layout estimationRealtor360
2D IoU89
8
360° layout estimationStanford2D3D
2D IoU88.37
8
General Layout EstimationMatterportLayout
2DIoU0.8261
8
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