@inproceedings{f7b66db3e0f24da3aab68253fa07ba47,
title = "Learning depth from monocular sequence with convolutional LSTM network",
abstract = "Resolving depth from monocular RGB image has been a long-standing task in computer vision and robotics. Recently, deep learning based methods has become a popular algorithm on depth estimation. Most existing learning based methods take image-pair as input and utilize feature matching across frames to resolve depth. However, two-frame methods require sufficient and static camera motion to reach optimal performance, while camera motion is usually uncontrollable in most application scenarios. In this paper we propose a recurrent neural network based depth estimation network. With the ability of taking multiple images as input, recurrent neural network will decide by itself which image to reference during estimation. We train a u-net like network architecture which utilizes convolutional LSTM in the encoder. We demonstrate our proposed method with the TUM RGB-D dataset, where our proposed method shows the ability of estimating depth with various sequence lengths as input.",
keywords = "Convolutional LSTM, Deep learning, Multi-view depth estimation, Recurrent neural network",
author = "Yeh, {Chia Hung} and Huang, {Yao Pao} and Lin, {Chih Yang} and Lin, {Min Hui}",
note = "Publisher Copyright: {\textcopyright} Springer Nature Switzerland AG 2020.; 22nd International Conference on Network-Based Information Systems, NBiS 2019 ; Conference date: 05-09-2019 Through 07-09-2019",
year = "2020",
doi = "10.1007/978-3-030-29029-0_48",
language = "???core.languages.en_GB???",
isbn = "9783030290283",
series = "Advances in Intelligent Systems and Computing",
publisher = "Springer Verlag",
pages = "502--507",
editor = "Leonard Barolli and Hiroaki Nishino and Tomoya Enokido and Makoto Takizawa",
booktitle = "Advances in Networked-based Information Systems - The 22nd International Conference on Network-Based Information Systems, NBiS 2019",
}