Semi-Automatic Labeling and Semantic Segmentation of Gram-Stained
Microscopic Images from DIBaS Dataset
- URL: http://arxiv.org/abs/2208.10737v1
- Date: Tue, 23 Aug 2022 05:18:19 GMT
- Title: Semi-Automatic Labeling and Semantic Segmentation of Gram-Stained
Microscopic Images from DIBaS Dataset
- Authors: Chethan Reddy G.P., Pullagurla Abhijith Reddy, Vidyashree R. Kanabur,
Deepu Vijayasenan, Sumam S. David and Sreejith Govindan
- Abstract summary: A Deep learning model is trained to achieve the semantic segmentation and classification of the bacteria species.
Deep learning models find tremendous applications in biomedical image processing.
- Score: 2.0225826789157404
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, a semi-automatic annotation of bacteria genera and species
from DIBaS dataset is implemented using clustering and thresholding algorithms.
A Deep learning model is trained to achieve the semantic segmentation and
classification of the bacteria species. Classification accuracy of 95% is
achieved. Deep learning models find tremendous applications in biomedical image
processing. Automatic segmentation of bacteria from gram-stained microscopic
images is essential to diagnose respiratory and urinary tract infections,
detect cancers, etc. Deep learning will aid the biologists to get reliable
results in less time. Additionally, a lot of human intervention can be reduced.
This work can be helpful to detect bacteria from urinary smear images, sputum
smear images, etc to diagnose urinary tract infections, tuberculosis,
pneumonia, etc.
Related papers
- Masked Autoencoders for Microscopy are Scalable Learners of Cellular Biology [2.7280901660033643]
This work explores the scaling properties of weakly supervised classifiers and self-supervised masked autoencoders (MAEs)
Our results show that ViT-based MAEs outperform weakly supervised classifiers on a variety of tasks, achieving as much as a 11.5% relative improvement when recalling known biological relationships curated from public databases.
We develop a new channel-agnostic MAE architecture (CA-MAE) that allows for inputting images of different numbers and orders of channels at inference time.
arXiv Detail & Related papers (2024-04-16T02:42:06Z) - 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) - Seamless Iterative Semi-Supervised Correction of Imperfect Labels in
Microscopy Images [57.42492501915773]
In-vitro tests are an alternative to animal testing for the toxicity of medical devices.
Human fatigue plays a role in error making, making the use of deep learning appealing.
We propose Seamless Iterative Semi-Supervised correction of Imperfect labels (SISSI)
Our method successfully provides an adaptive early learning correction technique for object detection.
arXiv Detail & Related papers (2022-08-05T18:52:20Z) - Learning multi-scale functional representations of proteins from
single-cell microscopy data [77.34726150561087]
We show that simple convolutional networks trained on localization classification can learn protein representations that encapsulate diverse functional information.
We also propose a robust evaluation strategy to assess quality of protein representations across different scales of biological function.
arXiv Detail & Related papers (2022-05-24T00:00:07Z) - AGAR a microbial colony dataset for deep learning detection [0.0]
The Annotated Germs for Automated Recognition dataset is an image database of microbial colonies cultured on agar plates.
This study describes the dataset itself and the process of its development.
In the second part, the performance of selected deep neural network architectures for object detection was evaluated on the AGAR dataset.
arXiv Detail & Related papers (2021-08-03T01:26:41Z) - Parasitic Egg Detection and Classification in Low-cost Microscopic
Images using Transfer Learning [1.6050172226234583]
We propose a CNN-based technique using transfer learning strategy to enhance the efficiency of automatic parasite classification in poor-quality microscopic images.
Our proposed framework outperforms the state-of-the-art object recognition methods.
Our system combined with final decision from an expert may improve the real faecal examination with low-cost microscopes.
arXiv Detail & Related papers (2021-07-02T11:05:45Z) - A fully automated end-to-end process for fluorescence microscopy images
of yeast cells: From segmentation to detection and classification [0.0]
We build an end-to-end process to automatically segment, detect and classify cell compartments of fluorescence microscopy images of yeast cells.
This fully automated process is intended to be integrated into an interactive e-Science server in the PerICo1 project.
Although the application domain is optical microscopy in yeast cells, the method is also applicable to multiple-cell images in medical applications.
arXiv Detail & Related papers (2021-04-06T21:24:50Z) - Towards an Automatic Analysis of CHO-K1 Suspension Growth in
Microfluidic Single-cell Cultivation [63.94623495501023]
We propose a novel Machine Learning architecture, which allows us to infuse a neural deep network with human-powered abstraction on the level of data.
Specifically, we train a generative model simultaneously on natural and synthetic data, so that it learns a shared representation, from which a target variable, such as the cell count, can be reliably estimated.
arXiv Detail & Related papers (2020-10-20T08:36:51Z) - Deep Low-Shot Learning for Biological Image Classification and
Visualization from Limited Training Samples [52.549928980694695]
In situ hybridization (ISH) gene expression pattern images from the same developmental stage are compared.
labeling training data with precise stages is very time-consuming even for biologists.
We propose a deep two-step low-shot learning framework to accurately classify ISH images using limited training images.
arXiv Detail & Related papers (2020-10-20T06:06:06Z) - Deep learning approach to describe and classify fungi microscopic images [4.759323753598067]
We apply a machine learning approach based on deep neural networks and Fisher Vector to classify microscopic images of various fungi species.
Our approach has the potential to make the last stage of biochemical identification redundant, shortening the identification process by 2-3 days, and reducing the cost of the diagnosis.
arXiv Detail & Related papers (2020-05-24T15:15:07Z) - Automatic image-based identification and biomass estimation of
invertebrates [70.08255822611812]
Time-consuming sorting and identification of taxa pose strong limitations on how many insect samples can be processed.
We propose to replace the standard manual approach of human expert-based sorting and identification with an automatic image-based technology.
We use state-of-the-art Resnet-50 and InceptionV3 CNNs for the classification task.
arXiv Detail & Related papers (2020-02-05T21:38:57Z)
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.