scispace - formally typeset
Book ChapterDOI

An Implementation of Malaria Detection Using Regional Descriptor and PSO-SVM Classifier

Reads0
Chats0
TLDR
A new tool to diagnose malaria using regional descriptor and PSO-SVM classifier is made, which pathologists can easily detect malaria parasites, and they can achieve 98% accuracy.
Abstract
Malaria is a serious worldwide health issue which causes an expected 13,444 individuals in danger of malaria in 2017. The estimated cost of detection of malaria in India is 11,640 crores per year. So there is an urgent need for a new tool to diagnose malaria. Malaria is completely preventable and treatable disease. In this project, we make a new tool to diagnose malaria using regional descriptor and PSO-SVM classifier. The proposed work used various image processing techniques like image acquisition, image pre-processing, image segmentation, feature extraction and classification. The implementation work is mainly focusing on detection accuracy, computational time, less estimation time for parasite detection. In this way, the new tool for the detection of malaria parasites gives faster and accurate results, and by using this proposed methods pathologists can easily detect malaria parasites, and they can achieve 98% accuracy. This new tool is useful to reduce deaths.

read more

Citations
More filters
OtherDOI

Improved Otsu Algorithm for Segmentation of Malaria Parasite Images

TL;DR: In this article , an improved Otsu method was proposed for segmentation of malaria parasite images, which is a well-known automatic segmentation method in malaria blood smear image segmentation.
References
More filters
Proceedings ArticleDOI

Automated system for malaria parasite identification

TL;DR: This paper provides an approach to identify the species of malaria using digital image processing and describes image acquisition, preprocessing, segmentation algorithms, and classifier.
Proceedings ArticleDOI

Blood cell segmentation from microscopic blood images

TL;DR: This paper approaches methods to segment the blood cells from microscopic thin blood images to perform higher level tasks for example, automatic differential blood counting, detection of different diseases such as Malaria, Babesia, Chagas disease, Anemia, Leukemia etc.
Journal ArticleDOI

A Survey on Feature Extraction Techniques for Shape based Object Recognition

TL;DR: Some of the feature extraction techniques, with their invariance properties are discussed here for the image retrieval system.
Proceedings ArticleDOI

Detection of malaria parasites using digital image processing

TL;DR: An accurate, rapid and affordable model of malaria diagnosis using stained thin blood smear images was developed and a set of features based on intensity have been proposed, and the performance of these features on red blood cell samples from the created database have been evaluated using an artificial neural network (ANN) classifier.
Proceedings ArticleDOI

Identify malaria parasite using pattern recognition technique

TL;DR: This technique can detect the existence of malaria parasite within seconds and thus can replace the conventional methods of detection of malaria in bio-medical applications and medical science.
Related Papers (5)