Automated blood cell counter

Revolutionize cell counting with our AI-powered project, ensuring accuracy, speed, and efficiency for diverse scientific and medical applications.

Try it out - Cell Counting Demo!

Upload an image for AI model analysis
to quantify cell count.

Sample Images!
Click to try one of these:

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Note: We've utilized publicly available data, so please be aware that results may vary accordingly.

Features

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Object Detection Using YOLOv5

The project utilizes the YOLOv5 (You Only Look Once) deep learning algorithm for efficient and accurate real-time object detection.
YOLOv5 enables the identification and localization of various blood cell types, including White Blood Cells (WBC), Red Blood Cells (RBC), and Platelets.

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Multi-Class Blood Cell Detection

The system is capable of detecting multiple classes of blood cells, providing a comprehensive analysis of the blood sample.
Differentiated detection for WBCs, RBCs, and Platelets allows for a detailed understanding of the blood composition.

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Counting Functionality

In addition to detection, the project incorporates a counting mechanism for each blood cell type.
Accurate counting of WBCs, RBCs, and Platelets provides valuable quantitative information for medical diagnosis and research.


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Real-Time Processing

The implementation ensures real-time processing, enabling quick and efficient analysis of blood samples.
This feature is crucial for timely medical assessments and diagnostics.

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User-Friendly Interface

The project includes a user-friendly interface for easy interaction.
The interface may include options for uploading blood cell images, initiating detection, and viewing the results, making it accessible to users with varying technical backgrounds.

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Visualizations and Reports

The project generates visualizations such as bounding boxes around detected cells, aiding in the interpretation of results.
Detailed reports may be generated, summarizing the counts and distribution of each blood cell type in the analyzed sample.

Performence Metrics

Unlock success with precision: Measure, Optimize, Succeed!

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Precision

Indicates the ratio of true positive predictions to the total predicted positives. High precision means few false positives.

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Recall

Indicates the ratio of true positive predictions to the total actual positives. High recall means few false negatives.

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F1-Score

The harmonic mean of precision and recall. It provides a balance between precision and recall.

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Support

The number of actual occurrences of each class in the specified dataset.

Cell Detection Model

Overall Accuracy of the Cell Detection Model is

95%

.

Tabular Representation

Red Blood Cell

White Blood Cell

Precision 93% 97%
Recall 95% 96%
F1-Score 94% 96%
Support 52,000 8,000

Graphical Representation

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Classification Model

Overall Accuracy of the Classification Model is

96%

.

Tabular Representation

Basophile
Eosinophil
Lymphocyte
Monocyte
Neutrophil
Precision 95% 94% 96% 97% 96%
Recall 95% 95% 96% 97% 96%
F1-Score 95% 94% 96% 96% 96%
Support 4000 4000 4000 4000 4000

Graphical Representation

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Our Proud Partners

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Our Valuable Clients

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Testimonials

Discover the genuine satisfaction expressed by our clients in their testimonials. Dive into firsthand accounts of exceptional service and positive outcomes, as delighted clients share their authentic experiences.