Deep neural networks approach to microbial colony detection – a comparative analysis

08/23/2021
by   Sylwia Majchrowska, et al.
0

Counting microbial colonies is a fundamental task in microbiology and has many applications in numerous industry branches. Despite this, current studies towards automatic microbial counting using artificial intelligence are hardly comparable due to the lack of unified methodology and the availability of large datasets. The recently introduced AGAR dataset is the answer to the second need, but the research carried out is still not exhaustive. To tackle this problem, we compared the performance of three well-known deep learning approaches for object detection on the AGAR dataset, namely two-stage, one-stage and transformer based neural networks. The achieved results may serve as a benchmark for future experiments.

READ FULL TEXT
research
10/22/2018

A Comparative Study of Fruit Detection and Counting Methods for Yield Mapping in Apple Orchards

We present new methods for apple detection and counting based on recent ...
research
04/12/2016

Counting Everyday Objects in Everyday Scenes

We are interested in counting the number of instances of object classes ...
research
03/12/2023

A Monkey Swing Counting Algorithm Based on Object Detection

This paper focuses on proposing a deep learning-based monkey swing count...
research
05/12/2021

Waste detection in Pomerania: non-profit project for detecting waste in environment

Waste pollution is one of the most significant environmental issues in t...
research
06/17/2023

Object counting from aerial remote sensing images: application to wildlife and marine mammals

Anthropogenic activities pose threats to wildlife and marine fauna, prom...
research
04/16/2020

Shortcut Learning in Deep Neural Networks

Deep learning has triggered the current rise of artificial intelligence ...
research
11/30/2019

Fooling the Crowd with Deep Learning-based Methods

Modern, state-of-the-art deep learning approaches yield human like perfo...

Please sign up or login with your details

Forgot password? Click here to reset