Semantic Segmentation of Anaemic RBCs Using Multilevel Deep Convolutional Encoder-Decoder Network
Muhammad Shahzad, Arif Iqbal Umar, Syed Hamad Shirazi, Israr Ahmed, Shaikh

TL;DR
This paper introduces a multi-level deep convolutional encoder-decoder network for pixel-level segmentation of red blood cells in blood images, aiding in diagnosing anemia with high accuracy and detailed morphological analysis.
Contribution
The study proposes a novel multi-level CNN architecture and provides two new annotated RBC datasets for improved pixel-level analysis of healthy and anaemic blood samples.
Findings
Achieved over 97% accuracy in segmentation tasks
High IoU scores indicating precise segmentation
Effective morphological analysis of RBCs
Abstract
Pixel-level analysis of blood images plays a pivotal role in diagnosing blood-related diseases, especially Anaemia. These analyses mainly rely on an accurate diagnosis of morphological deformities like shape, size, and precise pixel counting. In traditional segmentation approaches, instance or object-based approaches have been adopted that are not feasible for pixel-level analysis. The convolutional neural network (CNN) model required a large dataset with detailed pixel-level information for the semantic segmentation of red blood cells in the deep learning domain. In current research work, we address these problems by proposing a multi-level deep convolutional encoder-decoder network along with two state-of-the-art healthy and Anaemic-RBC datasets. The proposed multi-level CNN model preserved pixel-level semantic information extracted in one layer and then passed to the next layer to…
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