Back to Search Start Over

Searching for Efficient Multi-Scale Architectures for Dense Image Prediction

Authors :
Chen, Liang-Chieh
Collins, Maxwell D.
Zhu, Yukun
Papandreou, George
Zoph, Barret
Schroff, Florian
Adam, Hartwig
Shlens, Jonathon
Publication Year :
2018

Abstract

The design of neural network architectures is an important component for achieving state-of-the-art performance with machine learning systems across a broad array of tasks. Much work has endeavored to design and build architectures automatically through clever construction of a search space paired with simple learning algorithms. Recent progress has demonstrated that such meta-learning methods may exceed scalable human-invented architectures on image classification tasks. An open question is the degree to which such methods may generalize to new domains. In this work we explore the construction of meta-learning techniques for dense image prediction focused on the tasks of scene parsing, person-part segmentation, and semantic image segmentation. Constructing viable search spaces in this domain is challenging because of the multi-scale representation of visual information and the necessity to operate on high resolution imagery. Based on a survey of techniques in dense image prediction, we construct a recursive search space and demonstrate that even with efficient random search, we can identify architectures that outperform human-invented architectures and achieve state-of-the-art performance on three dense prediction tasks including 82.7\% on Cityscapes (street scene parsing), 71.3\% on PASCAL-Person-Part (person-part segmentation), and 87.9\% on PASCAL VOC 2012 (semantic image segmentation). Additionally, the resulting architecture is more computationally efficient, requiring half the parameters and half the computational cost as previous state of the art systems.<br />Comment: Accepted by NIPS 2018

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1809.04184
Document Type :
Working Paper