Latest Past Events
MEDICAL IMAGE PROCESSING
CHRIST(Deemed to be University), Kengeri Campus Kanmanike, BangaloreTechnical Talk on Medical Image Processing by Dr Abhishek Appaji The Technical Talk on Medical Image Processing covered the following topics: Digital Images Digital images are the foundation of image processing and are composed of a matrix of pixels. Each pixel represents a specific colour or intensity value. The session began by explaining digital images, highlighting their properties, such as resolution, bit depth, and colour representation. Understanding these properties is crucial for comprehending how images are captured, stored, and manipulated in various applications. Digital Image Processing Digital image processing involves the manipulation of digital images through computer algorithms. The session provided an overview of different techniques and methodologies used in this field. These techniques include image filtering, transformation, compression, and restoration. Digital image processing aims to enhance images' visual quality, extract meaningful information, and prepare images for further analysis or use. History of Digital Image Processing The historical perspective on the development and evolution of digital image processing was discussed. This segment covered the milestones in the field, from the early days of analog image processing to the advent of digital techniques. Significant contributions by researchers and the impact of technological advancements on the field were highlighted. Image Enhancement Image enhancement techniques are used to improve an image's visual appearance or highlight certain features. The session delved into various methods to enhance image quality, such as contrast adjustment, noise reduction, and sharpening. These techniques are essential in medical imaging, where clear and detailed images are crucial for accurate diagnosis and treatment. Applications in Various Fields The session explored the diverse applications of digital image processing across different fields: Medical: Image processing is vital for diagnostics and treatment planning in the medical field. Techniques such as MRI, CT scans, and X-rays rely heavily on advanced image processing to provide clear and detailed images of the human body. Movies: In the film industry, image processing is used for creating special effects, editing, and enhancing visual quality. Techniques like CGI (Computer-Generated Imagery) and motion capture have revolutionized filmmaking. GIS (Geographic Information Systems): Image processing plays a significant role in GIS for mapping, spatial analysis, and satellite imagery interpretation. It helps in creating accurate maps and models of geographical areas. Industrial Inspection: Image processing is used for quality control and inspection processes in industrial settings. Automated systems with image processing capabilities can detect defects, measure dimensions, and ensure product quality. Other Fields: The session also touched upon various other image processing applications, such as in security systems, remote sensing, and scientific research. Stages of Image Processing The different stages involved in image processing were explained in detail. These stages include image acquisition, preprocessing, segmentation, feature extraction, and classification. Each stage has its specific techniques and tools that contribute to the overall process of transforming raw image data into useful information. Story of X-ray A historical account of the discovery and development of X-ray technology was presented. This segment highlighted the significant milestones in X-ray imaging, from its discovery by Wilhelm Conrad Roentgen to its widespread use in medical diagnostics today. The advancements in X-ray technology and its impact on medical science were discussed. Medical Image Processing An in-depth discussion on the processing of medical images covered various applications such as diagnostic imaging, treatment planning, and research. Techniques used for enhancing and analyzing medical images, such as MRI, CT scans, and ultrasound, were explained. Accurate and detailed medical images were emphasised to improve patient outcomes.
COMPUTING ALGORITHM FOR GEOSPATIAL DATA SESSION 2
CHRIST(Deemed to be University), Kengeri Campus Kanmanike, BangaloreHANDS-ON DEEP LEARNING ALGORITHMS FOR LAND COVER MAPPING FROM SATELLITE IMAGES Deep learning (DL), a branch of machine learning (ML) and artificial intelligence (AI) is nowadays considered as a core technology of today’s Fourth and Fifth Industrial Revolution (Industry 4.0 and Industry 5.0). Due to its learning capabilities from raw data, DL technology originated from artificial neural network (ANN), has become a hot topic in the context of computing, and is widely applied in various application research areas like healthcare, remote sensing, semiconductor manufacturing industry, visual recognition, natural language processing, text analytics, cybersecurity, 5G Networks and many more. However, building an appropriate DL model is a challenging task, due to the dynamic nature and variations in real-world problems and data. Moreover, the lack of core understanding turns DL methods into black-box machines that hamper development at the standard level for societal applications. This session presents DL algorithms for Land Cover Mapping using Python Programming and deep Learning TensorFlow Library. This session also summarizes real-world application areas where deep learning techniques can be used. Finally, Practical demonstration of UNet and DPPNet model for Land Cover Mapping using Satellite Images and Python Deep Learning TensorFlow Library. Learning Objectives: The primary objective of the expert talk is to enlighten the audience on the potential and challenges of using Deep Learning Algorithms for Land Cover Mapping from Satellite Images both theoretical and practical. At the end of the session, the participants should be able to understand: Understand fundamental concepts of 2D U-Net and DPPNet CNN Models The challenges of working with Land Cover Mapping from Satellite Image Understand the advance deep learning algorithms How to practically implement DL techniques using TensorFlow Target Audience: Students, researchers, academic and industry professionals who have foundational theoretical knowledge of Probability, Linear Algebra, Computer Vision, Image Processing and Fundamental of Artificial Neural Networks.
GENERATIVE AI WORKSHOP
CHRIST(Deemed to be University), Kengeri Campus Kanmanike, BangaloreUnleash your creativity with Generative AI! Dive into the fascinating world of AI-driven creativity at our hands-on workshop. Led by experts, explore the fundamentals and applications of generative AI. Whether you're a seasoned enthusiast or new to AI, join us to discover how this technology is transforming art, music, and more. Don't miss out on this opportunity to expand your knowledge, connect with peers, and shape the future of technology. Secure your spot now and be part of the creative revolution!