Peripheral blood smear (PBS) analysis is a critical diagnostic tool for diseases including malaria, leukemia, and cancer. This monograph addresses the key challenges associated with image analysis of PBS images and highlights innovative systems that automate the identification of specific pathologies.It reviews state-of-the-art algorithms for segmentation, color representation and normalization, image enhancement and restoration, and volume visualization, as well as relevant AI and machine learning techniques. The book also explains automated systems and workflows developed to address specific disease classes, supported by detailed case studies.Key Features:Covers fundamental and advanced aspects of image analysis in the hematological fieldFocuses on blood cell segmentation and classification, along with practical guidelines for implementationExplores current challenges in integrating these technologies into real-world clinical settingsDiscusses ethical considerations and challenges associated with automation in medical diagnosisIncludes relevant MATLAB and Python code, along with case studies on the segmentation of erythrocytes (RBCs) and leukocytes (WBCs)This book is aimed at graduate students and researchers in bioengineering and image processing, as well as clinicians.