Stacked U-Nets: A No-Frills Approach to Natural Image Segmentation

04/27/2018
by   Sohil Shah, et al.
0

Many imaging tasks require global information about all pixels in an image. Conventional bottom-up classification networks globalize information by decreasing resolution; features are pooled and downsampled into a single output. But for semantic segmentation and object detection tasks, a network must provide higher-resolution pixel-level outputs. To globalize information while preserving resolution, many researchers propose the inclusion of sophisticated auxiliary blocks, but these come at the cost of a considerable increase in network size and computational cost. This paper proposes stacked u-nets (SUNets), which iteratively combine features from different resolution scales while maintaining resolution. SUNets leverage the information globalization power of u-nets in a deeper network architectures that is capable of handling the complexity of natural images. SUNets perform extremely well on semantic segmentation tasks using a small number of parameters.

READ FULL TEXT

page 8

page 14

page 16

research
03/16/2021

EADNet: Efficient Asymmetric Dilated Network for Semantic Segmentation

Due to real-time image semantic segmentation needs on power constrained ...
research
07/20/2017

Deep Layer Aggregation

Convolutional networks have had great success in image classification an...
research
03/29/2017

LabelBank: Revisiting Global Perspectives for Semantic Segmentation

Semantic segmentation requires a detailed labeling of image pixels by ob...
research
07/15/2019

CA-RefineNet:A Dual Input WSI Image Segmentation Algorithm Based on Attention

Due to the high resolution of pathological images, the automated semanti...
research
04/26/2022

Finding a Landing Site on an Urban Area: A Multi-Resolution Probabilistic Approach

This paper considers the problem of finding a landing spot for a drone i...
research
07/15/2019

DA-RefineNet:A Dual Input Whole Slide Image Segmentation Algorithm Based on Attention

Due to the high resolution of pathological images, the automated semanti...
research
01/12/2019

Automatic classification of geologic units in seismic images using partially interpreted examples

Geologic interpretation of large seismic stacked or migrated seismic ima...

Please sign up or login with your details

Forgot password? Click here to reset