OSTA: One-shot Task-adaptive Channel Selection for Semantic Segmentation of Multichannel Images

05/08/2023
by   Yuanzhi Cai, et al.
0

Semantic segmentation of multichannel images is a fundamental task for many applications. Selecting an appropriate channel combination from the original multichannel image can improve the accuracy of semantic segmentation and reduce the cost of data storage, processing and future acquisition. Existing channel selection methods typically use a reasonable selection procedure to determine a desirable channel combination, and then train a semantic segmentation network using that combination. In this study, the concept of pruning from a supernet is used for the first time to integrate the selection of channel combination and the training of a semantic segmentation network. Based on this concept, a One-Shot Task-Adaptive (OSTA) channel selection method is proposed for the semantic segmentation of multichannel images. OSTA has three stages, namely the supernet training stage, the pruning stage and the fine-tuning stage. The outcomes of six groups of experiments (L7Irish3C, L7Irish2C, L8Biome3C, L8Biome2C, RIT-18 and Semantic3D) demonstrated the effectiveness and efficiency of OSTA. OSTA achieved the highest segmentation accuracies in all tests (62.49 (mIoU), 75.40 (mIoU), respectively). It even exceeded the highest accuracies of exhaustive tests (61.54 and 70.27 tested. All of this can be accomplished within a predictable and relatively efficient timeframe, ranging from 101.71 train the segmentation network alone. In addition, there were interesting findings that were deemed valuable for several fields.

READ FULL TEXT

page 1

page 13

research
04/12/2023

Few Shot Semantic Segmentation: a review of methodologies and open challenges

Semantic segmentation assigns category labels to each pixel in an image,...
research
07/16/2020

Multi-Task Pruning for Semantic Segmentation Networks

This paper focuses on channel pruning for semantic segmentation networks...
research
11/29/2018

Efficient Semantic Segmentation for Visual Bird's-eye View Interpretation

The ability to perform semantic segmentation in real-time capable applic...
research
11/28/2022

PlasmoID: A dataset for Indonesian malaria parasite detection and segmentation in thin blood smear

Indonesia holds the second-highest-ranking country for the highest numbe...
research
06/09/2018

Robust Semantic Segmentation with Ladder-DenseNet Models

We present semantic segmentation experiments with a model capable to per...
research
07/23/2019

Exploring Semantic Segmentation on the DCT Representation

Typical convolutional networks are trained and conducted on RGB images. ...
research
11/18/2021

Dynamically pruning segformer for efficient semantic segmentation

As one of the successful Transformer-based models in computer vision tas...

Please sign up or login with your details

Forgot password? Click here to reset