4.6 Article

Monocular Depth Estimation Based on Multi-Scale Depth Map Fusion

期刊

IEEE ACCESS
卷 9, 期 -, 页码 67696-67705

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3076346

关键词

Feature extraction; Estimation; Fuses; Decoding; Semantics; Predictive models; Data mining; Monocular depth estimation; dense feature fusion network; depth adaptive fusion module; multi-scale depth maps; indoor

资金

  1. School Research Projects of Wuyi University [2019AL032]

向作者/读者索取更多资源

In this paper, a Dense feature fusion network and an adaptive depth fusion module are proposed to fuse multi-scale depth maps effectively for improving the accuracy and object information retrieval in monocular depth estimation. The method enhances the depth map's structure and contour information by integrating diverse depth maps at different scales.
Monocular depth estimation is a basic task in machine vision. In recent years, the performance of monocular depth estimation has been greatly improved. However, most depth estimation networks are based on a very deep network to extract features that lead to a large amount of information lost. The loss of object information is particularly serious in the encoding and decoding process. This information loss leads to the estimated depth maps lacking object structure detail and have non-clear edges. Especially in a complex indoor environment, which is our research focus in this paper, the consequences of this loss of information are particularly serious. To solve this problem, we propose a Dense feature fusion network that uses a feature pyramid to aggregate various scale features. Furthermore, to improve the fusion effectiveness of decoded object contour information and depth information, we propose an adaptive depth fusion module, which allows the fusion network to fuse various scale depth maps adaptively to increase object information in the predicted depth map. Unlike other work predicting depth maps relying on U-NET architecture, our depth map predicted by fusing multi-scale depth maps. These depth maps have their own characteristics. By fusing them, we can estimate depth maps that not only include accurate depth information but also have rich object contour and structure detail. Experiments indicate that the proposed model can predict depth maps with more object information than other prework, and our model also shows competitive accuracy. Furthermore, compared with other contemporary techniques, our method gets state-of-the-art in edge accuracy on the NYU Depth V2 dataset.

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