Computer Vision and Handwriting Recognition - Day 3 Afternoon
Center for Language & Speech Processing(CLSP), JHU via YouTube
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Explore computer vision techniques and handwriting recognition systems through comprehensive lecture slides from JSALT 2025, delivered by Michal Hradiš from the Center for Language & Speech Processing at Johns Hopkins University. Delve into the intersection of computer vision and optical character recognition, examining how modern machine learning approaches tackle the challenge of automatically interpreting handwritten text. Learn about feature extraction methods, neural network architectures, and pattern recognition algorithms specifically designed for handwriting analysis. Discover preprocessing techniques for document images, segmentation strategies for isolating individual characters and words, and post-processing methods to improve recognition accuracy. Examine real-world applications including historical document digitization, form processing, and automated transcription systems. Study the evolution from traditional template matching approaches to deep learning solutions, understanding the advantages and limitations of different methodologies. Gain insights into dataset preparation, training procedures, and evaluation metrics commonly used in handwriting recognition research. Access detailed visual explanations and technical diagrams that illustrate key concepts in this specialized field of computer vision.
Syllabus
[slides] Day 3 afternoon - JSALT 2025 - Hradis: Computer Vision and Handwriting Recognition
Taught by
Center for Language & Speech Processing(CLSP), JHU