Literature DB >> 31135354

Adaptive Feature Recombination and Recalibration for Semantic Segmentation With Fully Convolutional Networks.

Sergio Pereira, Adriano Pinto, Joana Amorim, Alexandrine Ribeiro, Victor Alves, Carlos A Silva.   

Abstract

Fully convolutional networks have been achieving remarkable results in image semantic segmentation, while being efficient. Such efficiency results from the capability of segmenting several voxels in a single forward pass. So, there is a direct spatial correspondence between a unit in a feature map and the voxel in the same location. In a convolutional layer, the kernel spans over all channels and extracts information from them. We observe that linear recombination of feature maps by increasing the number of channels followed by compression may enhance their discriminative power. Moreover, not all feature maps have the same relevance for the classes being predicted. In order to learn the inter-channel relationships and recalibrate the channels to suppress the less relevant ones, squeeze and excitation blocks were proposed in the context of image classification with convolutional neural networks. However, this is not well adapted for segmentation with fully convolutional networks since they segment several objects simultaneously, hence a feature map may contain relevant information only in some locations. In this paper, we propose recombination of features and a spatially adaptive recalibration block that is adapted for semantic segmentation with fully convolutional networks- the SegSE block. Feature maps are recalibrated by considering the cross-channel information together with spatial relevance. The experimental results indicate that recombination and recalibration improve the results of a competitive baseline, and generalize across three different problems: brain tumor segmentation, stroke penumbra estimation, and ischemic stroke lesion outcome prediction. The obtained results are competitive or outperform the state of the art in the three applications.

Entities:  

Year:  2019        PMID: 31135354     DOI: 10.1109/TMI.2019.2918096

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  5 in total

1.  Optimized Deconvolutional Algorithm-based CT Perfusion Imaging in Diagnosis of Acute Cerebral Infarction.

Authors:  Xiaoxia Chen; Xiao Bai; Xin Shu; Xucheng He; Jinjing Zhao; Xiaodong Guo; Guisheng Wang
Journal:  Contrast Media Mol Imaging       Date:  2022-06-06       Impact factor: 3.009

2.  Deep learning-based detection and segmentation-assisted management of brain metastases.

Authors:  Jie Xue; Bao Wang; Yang Ming; Xuejun Liu; Zekun Jiang; Chengwei Wang; Xiyu Liu; Ligang Chen; Jianhua Qu; Shangchen Xu; Xuqun Tang; Ying Mao; Yingchao Liu; Dengwang Li
Journal:  Neuro Oncol       Date:  2020-04-15       Impact factor: 12.300

3.  SM-SegNet: A Lightweight Squeeze M-SegNet for Tissue Segmentation in Brain MRI Scans.

Authors:  Nagaraj Yamanakkanavar; Jae Young Choi; Bumshik Lee
Journal:  Sensors (Basel)       Date:  2022-07-08       Impact factor: 3.847

Review 4.  Automated Identification of Multiple Findings on Brain MRI for Improving Scan Acquisition and Interpretation Workflows: A Systematic Review.

Authors:  Kaining Sheng; Cecilie Mørck Offersen; Jon Middleton; Jonathan Frederik Carlsen; Thomas Clement Truelsen; Akshay Pai; Jacob Johansen; Michael Bachmann Nielsen
Journal:  Diagnostics (Basel)       Date:  2022-08-03

5.  Multi-level Kronecker Convolutional Neural Network (ML-KCNN) for Glioma Segmentation from Multi-modal MRI Volumetric Data.

Authors:  Muhammad Junaid Ali; Basit Raza; Ahmad Raza Shahid
Journal:  J Digit Imaging       Date:  2021-07-29       Impact factor: 4.903

  5 in total

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