Enhancement of damaged-image prediction through Cahn-Hilliard Image
Inpainting
- URL: http://arxiv.org/abs/2007.10753v2
- Date: Mon, 15 Mar 2021 17:26:56 GMT
- Title: Enhancement of damaged-image prediction through Cahn-Hilliard Image
Inpainting
- Authors: Jos\'e A. Carrillo, Serafim Kalliadasis, Fuyue Liang and Sergio P.
Perez
- Abstract summary: We train a neural network based on dense layers with the training set of MNIST.
We then contaminate the test set with damage of different types and intensities.
We compare the prediction accuracy of the neural network with and without applying the Cahn-Hilliard filter to the damaged images test.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We assess the benefit of including an image inpainting filter before passing
damaged images into a classification neural network. For this we employ a
modified Cahn-Hilliard equation as an image inpainting filter, which is solved
via a finite volume scheme with reduced computational cost and adequate
properties for energy stability and boundedness. The benchmark dataset employed
here is MNIST, which consists of binary images of handwritten digits and is a
standard dataset to validate image-processing methodologies. We train a neural
network based of dense layers with the training set of MNIST, and subsequently
we contaminate the test set with damage of different types and intensities. We
then compare the prediction accuracy of the neural network with and without
applying the Cahn-Hilliard filter to the damaged images test. Our results
quantify the significant improvement of damaged-image prediction due to
applying the Cahn-Hilliard filter, which for specific damages can increase up
to 50% and is in general advantageous for low to moderate damage.
Related papers
- Optimizing CNN Architectures for Advanced Thoracic Disease Classification [0.0]
We evaluate various CNN architectures to address challenges like dataset imbalance, variations in image quality, and hidden biases.
Our results highlight the potential of CNNs in medical imaging but emphasize that issues like unbalanced datasets and variations in image acquisition methods must be addressed for optimal model performance.
arXiv Detail & Related papers (2025-02-15T00:27:37Z) - Deep Learning Based Speckle Filtering for Polarimetric SAR Images. Application to Sentinel-1 [51.404644401997736]
We propose a complete framework to remove speckle in polarimetric SAR images using a convolutional neural network.
Experiments show that the proposed approach offers exceptional results in both speckle reduction and resolution preservation.
arXiv Detail & Related papers (2024-08-28T10:07:17Z) - Haar Nuclear Norms with Applications to Remote Sensing Imagery Restoration [53.68392692185276]
This paper proposes a novel low-rank regularization term, named the Haar nuclear norm (HNN), for efficient and effective remote sensing image restoration.
It leverages the low-rank properties of wavelet coefficients derived from the 2-D frontal slice-wise Haar discrete wavelet transform.
Experimental evaluations conducted on hyperspectral image inpainting, multi-temporal image cloud removal, and hyperspectral image denoising have revealed the HNN's potential.
arXiv Detail & Related papers (2024-07-11T13:46:47Z) - Semantic Ensemble Loss and Latent Refinement for High-Fidelity Neural Image Compression [58.618625678054826]
This study presents an enhanced neural compression method designed for optimal visual fidelity.
We have trained our model with a sophisticated semantic ensemble loss, integrating Charbonnier loss, perceptual loss, style loss, and a non-binary adversarial loss.
Our empirical findings demonstrate that this approach significantly improves the statistical fidelity of neural image compression.
arXiv Detail & Related papers (2024-01-25T08:11:27Z) - Performance of GAN-based augmentation for deep learning COVID-19 image
classification [57.1795052451257]
The biggest challenge in the application of deep learning to the medical domain is the availability of training data.
Data augmentation is a typical methodology used in machine learning when confronted with a limited data set.
In this work, a StyleGAN2-ADA model of Generative Adversarial Networks is trained on the limited COVID-19 chest X-ray image set.
arXiv Detail & Related papers (2023-04-18T15:39:58Z) - Benchmarking the Robustness of Deep Neural Networks to Common
Corruptions in Digital Pathology [11.398235052118608]
This benchmark is established to evaluate how deep neural networks perform on corrupted pathology images.
Two classification and one ranking metrics are designed to evaluate the prediction and confidence performance under corruption.
arXiv Detail & Related papers (2022-06-30T01:53:46Z) - Non-Reference Quality Monitoring of Digital Images using Gradient
Statistics and Feedforward Neural Networks [0.1657441317977376]
A non-reference quality metric is proposed to assess the quality of digital images.
The proposed metric is computationally faster than its counterparts and can be used for the quality assessment of image sequences.
arXiv Detail & Related papers (2021-12-27T20:21:55Z) - Image Quality Assessment using Contrastive Learning [50.265638572116984]
We train a deep Convolutional Neural Network (CNN) using a contrastive pairwise objective to solve the auxiliary problem.
We show through extensive experiments that CONTRIQUE achieves competitive performance when compared to state-of-the-art NR image quality models.
Our results suggest that powerful quality representations with perceptual relevance can be obtained without requiring large labeled subjective image quality datasets.
arXiv Detail & Related papers (2021-10-25T21:01:00Z) - Examining and Mitigating Kernel Saturation in Convolutional Neural
Networks using Negative Images [0.8594140167290097]
We analyze the effect of convolutional kernel saturation in CNNs.
We propose a simple data augmentation technique to mitigate saturation and increase classification accuracy, by supplementing negative images to the training dataset.
Our results show that CNNs are indeed susceptible to convolutional kernel saturation and that supplementing negative images to the training dataset can offer a statistically significant increase in classification accuracies.
arXiv Detail & Related papers (2021-05-10T06:06:49Z) - Learning degraded image classification with restoration data fidelity [0.0]
We investigate the influence of degradation types and levels on four widely-used classification networks.
We propose a novel method leveraging a fidelity map to calibrate the image features obtained by pre-trained networks.
Our results reveal that the proposed method is a promising solution to mitigate the effect caused by image degradation.
arXiv Detail & Related papers (2021-01-23T23:47:03Z) - Image Inpainting with Learnable Feature Imputation [8.293345261434943]
A regular convolution layer applying a filter in the same way over known and unknown areas causes visual artifacts in the inpainted image.
We propose (layer-wise) feature imputation of the missing input values to a convolution.
We present comparisons on CelebA-HQ and Places2 to current state-of-the-art to validate our model.
arXiv Detail & Related papers (2020-11-02T16:05:32Z) - Salvage Reusable Samples from Noisy Data for Robust Learning [70.48919625304]
We propose a reusable sample selection and correction approach, termed as CRSSC, for coping with label noise in training deep FG models with web images.
Our key idea is to additionally identify and correct reusable samples, and then leverage them together with clean examples to update the networks.
arXiv Detail & Related papers (2020-08-06T02:07:21Z) - Improved Slice-wise Tumour Detection in Brain MRIs by Computing
Dissimilarities between Latent Representations [68.8204255655161]
Anomaly detection for Magnetic Resonance Images (MRIs) can be solved with unsupervised methods.
We have proposed a slice-wise semi-supervised method for tumour detection based on the computation of a dissimilarity function in the latent space of a Variational AutoEncoder.
We show that by training the models on higher resolution images and by improving the quality of the reconstructions, we obtain results which are comparable with different baselines.
arXiv Detail & Related papers (2020-07-24T14:02:09Z)
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.