Machine learning has endless applications in the health care industry. White blood cell classification is one of the interesting and promising area of research. The classification of the white blood cells plays an important part in the medical diagnosis. In practise white blood cell classification is performed by the haematologist by taking a small smear of blood and careful examination under the microscope. The current procedures to identify the white blood cell subtype is more time taking and error-prone. The computer aided detection and diagnosis of the white blood cells tend to avoid the human error and reduce the time taken to classify the white blood cells. In the recent years several deep learning approaches have been developed in the context of classification of the white blood cells that are able to identify but are unable to localize the positions of white blood cells in the blood cell image. Following this, the present research proposes to utilize YOLOv3 object detection technique to localize and classify the white blood cells with bounding boxes. With exhaustive experimental analysis, the proposed work is found to detect the white blood cell with 99.2% accuracy and classify with 90% accuracy.
翻译:白血细胞分类是令人感兴趣和充满希望的研究领域之一。白血细胞分类在医学诊断中起着重要作用。在实践中,白血细胞分类由血液学家通过在显微镜下对血液进行小幅涂片和仔细检查来进行。目前用来识别白血细胞子型的程序是更长时间地采集和容易出错。计算机辅助的白血细胞检测和诊断往往避免人类错误,缩短白血细胞分类的时间。近年来,在白血细胞分类方面制定了若干深层次的学习方法,这些方法能够识别血液细胞图象中的白血细胞的位置,但无法将其本地化。此后,目前的研究提议利用YOLOv3天体检测技术对白血细胞进行本地化和分类,并用捆绑箱进行详细实验分析,发现拟议的工作是用99.2%的精确度和90%的精确度来检测白血细胞。