作者
Huan Fu, Mingming Gong, Chaohui Wang, Kayhan Batmanghelich, Dacheng Tao
发表日期
2018/6/6
研讨会论文
Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition
页码范围
2002-2011
简介
Monocular depth estimation, which plays a crucial role in understanding 3D scene geometry, is an ill-posed prob-lem. Recent methods have gained significant improvement by exploring image-level information and hierarchical features from deep convolutional neural networks (DCNNs). These methods model depth estimation as a regression problem and train the regression networks by minimizing mean squared error, which suffers from slow convergence and unsatisfactory local solutions. Besides, existing depth estimation networks employ repeated spatial pooling operations, resulting in undesirable low-resolution feature maps. To obtain high-resolution depth maps, skip-connections or multi-layer deconvolution networks are required, which complicates network training and consumes much more computations. To eliminate or at least largely reduce these problems, we introduce a spacing-increasing discretization (SID) strategy to discretize depth and recast depth network learning as an ordinal regression problem. By training the network using an ordinary regression loss, our method achieves much higher accuracy and faster convergence in synch. Furthermore, we adopt a multi-scale network structure which avoids unnecessary spatial pooling and captures multi-scale information in parallel. The proposed deep ordinal regression network (DORN) achieves state-of-the-art results on three challenging benchmarks, ie, KITTI [16], Make3D [49], and NYU Depth v2 [41], and outperforms existing methods by a large margin.
引用总数
201820192020202120222023202416161289381423388216
学术搜索中的文章
H Fu, M Gong, C Wang, K Batmanghelich, D Tao - Proceedings of the IEEE conference on computer …, 2018