A Spatially Constrained Deep Convolutional Neural Network for Nerve
Fiber Segmentation in Corneal Confocal Microscopic Images using Inaccurate
Annotations
- URL: http://arxiv.org/abs/2004.09443v1
- Date: Mon, 20 Apr 2020 16:56:13 GMT
- Title: A Spatially Constrained Deep Convolutional Neural Network for Nerve
Fiber Segmentation in Corneal Confocal Microscopic Images using Inaccurate
Annotations
- Authors: Ning Zhang, Susan Francis, Rayaz Malik, Xin Chen
- Abstract summary: We propose a spatially constrained deep convolutional neural network (DCNN) to achieve smooth and robust image segmentation.
The proposed method has been evaluated based on corneal confocal microscopic ( CCM) images for nerve fiber segmentation.
- Score: 10.761046991755311
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Semantic image segmentation is one of the most important tasks in medical
image analysis. Most state-of-the-art deep learning methods require a large
number of accurately annotated examples for model training. However, accurate
annotation is difficult to obtain especially in medical applications. In this
paper, we propose a spatially constrained deep convolutional neural network
(DCNN) to achieve smooth and robust image segmentation using inaccurately
annotated labels for training. In our proposed method, image segmentation is
formulated as a graph optimization problem that is solved by a DCNN model
learning process. The cost function to be optimized consists of a unary term
that is calculated by cross entropy measurement and a pairwise term that is
based on enforcing a local label consistency. The proposed method has been
evaluated based on corneal confocal microscopic (CCM) images for nerve fiber
segmentation, where accurate annotations are extremely difficult to be
obtained. Based on both the quantitative result of a synthetic dataset and
qualitative assessment of a real dataset, the proposed method has achieved
superior performance in producing high quality segmentation results even with
inaccurate labels for training.
Related papers
- Optimizations of Autoencoders for Analysis and Classification of
Microscopic In Situ Hybridization Images [68.8204255655161]
We propose a deep-learning framework to detect and classify areas of microscopic images with similar levels of gene expression.
The data we analyze requires an unsupervised learning model for which we employ a type of Artificial Neural Network - Deep Learning Autoencoders.
arXiv Detail & Related papers (2023-04-19T13:45:28Z) - Sharp-GAN: Sharpness Loss Regularized GAN for Histopathology Image
Synthesis [65.47507533905188]
Conditional generative adversarial networks have been applied to generate synthetic histopathology images.
We propose a sharpness loss regularized generative adversarial network to synthesize realistic histopathology images.
arXiv Detail & Related papers (2021-10-27T18:54:25Z) - Weakly supervised semantic segmentation of tomographic images in the
diagnosis of stroke [0.0]
This paper presents an automatic algorithm for the segmentation of areas affected by an acute stroke on the non-contrast computed tomography brain images.
The proposed algorithm is designed for learning in a weakly supervised scenario when some images are labeled accurately, and some images are labeled inaccurately.
arXiv Detail & Related papers (2021-09-04T15:24:38Z) - Learning Fuzzy Clustering for SPECT/CT Segmentation via Convolutional
Neural Networks [5.3123694982708365]
Quantitative bone single-photon emission computed tomography (QBSPECT) has the potential to provide a better quantitative assessment of bone metastasis than planar bone scintigraphy.
The segmentation of anatomical regions-of-interests (ROIs) still relies heavily on the manual delineation by experts.
This work proposes a fast and robust automated segmentation method for partitioning a QBSPECT image into lesion, bone, and background.
arXiv Detail & Related papers (2021-04-17T19:03:52Z) - Cascaded Robust Learning at Imperfect Labels for Chest X-ray
Segmentation [61.09321488002978]
We present a novel cascaded robust learning framework for chest X-ray segmentation with imperfect annotation.
Our model consists of three independent network, which can effectively learn useful information from the peer networks.
Our methods could achieve a significant improvement on the accuracy in segmentation tasks compared to the previous methods.
arXiv Detail & Related papers (2021-04-05T15:50:16Z) - Uncertainty guided semi-supervised segmentation of retinal layers in OCT
images [4.046207281399144]
We propose a novel uncertainty-guided semi-supervised learning based on a student-teacher approach for training the segmentation network.
The proposed framework is a key contribution and applicable for biomedical image segmentation across various imaging modalities.
arXiv Detail & Related papers (2021-03-02T23:14:25Z) - Few-shot Medical Image Segmentation using a Global Correlation Network
with Discriminative Embedding [60.89561661441736]
We propose a novel method for few-shot medical image segmentation.
We construct our few-shot image segmentor using a deep convolutional network trained episodically.
We enhance discriminability of deep embedding to encourage clustering of the feature domains of the same class.
arXiv Detail & Related papers (2020-12-10T04:01:07Z) - An Uncertainty-Driven GCN Refinement Strategy for Organ Segmentation [53.425900196763756]
We propose a segmentation refinement method based on uncertainty analysis and graph convolutional networks.
We employ the uncertainty levels of the convolutional network in a particular input volume to formulate a semi-supervised graph learning problem.
We show that our method outperforms the state-of-the-art CRF refinement method by improving the dice score by 1% for the pancreas and 2% for spleen.
arXiv Detail & Related papers (2020-12-06T18:55:07Z) - Weakly-supervised Learning For Catheter Segmentation in 3D Frustum
Ultrasound [74.22397862400177]
We propose a novel Frustum ultrasound based catheter segmentation method.
The proposed method achieved the state-of-the-art performance with an efficiency of 0.25 second per volume.
arXiv Detail & Related papers (2020-10-19T13:56:22Z) - Self-Loop Uncertainty: A Novel Pseudo-Label for Semi-Supervised Medical
Image Segmentation [30.644905857223474]
We propose a semi-supervised approach to train neural networks with limited labeled data and a large quantity of unlabeled images for medical image segmentation.
A novel pseudo-label (namely self-loop uncertainty) is adopted as the ground-truth for the unlabeled images to augment the training set and boost the segmentation accuracy.
arXiv Detail & Related papers (2020-07-20T02:52:07Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.