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Context-Aware Systems and Applications: 10th EAI International Conference, ICCASA 2021, Virtual Event, October 2829, 2021, Proceedings 1st ed. 2021 [Pehme köide]

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This book constitutes the refereed post-conference proceedings of the International Conference on Context-Aware Systems and Applications, held in October 2021. Due to COVID-19 pandemic the conference was held virtually.
The 25 revised full papers presented were carefully selected from 52 submissions. The papers cover a wide spectrum of modern approaches and techniques for smart computing systems and their applications.
Adapt and Flex or Die: A Systems Approach to an Unhealthy Healthcare
Supply Chain.- Knowledge Management Practices: Innovation the path to
Organizational Performance.- Predicting Humans Balance Disorder Based on
Center of Gravity Using Support Vector Machine.- Internet of Things Big Data
Management and Analytic: A survey and future researches.- Ensemble Learning
for Mining Opinions on Food Reviews.- Hidden Pattern: Toward Decision Support
Fuzzy Systems.- Applying Segmented Images by Louvain Method into
Content-Based Image Retrieval.- An effective approach for mining k-item High
Utility Itemsets from incremental databases.- Recover Realistic Faces from
Sketches.- Region Of Interest Selection on Plant Disease.- Memory-Constrained
Context-Aware Reasoning.- Segmentation-based methods for top-k discords
detection in static and streaming time series under Euclidean distance.-
Hardware/Software Co-design for Convolutional Neural Networks Acceleration: a
Survey and Open Issues.- Image Segmentation and Transfer Learning Approach
for Skin Classification.- Blockchain and Identity Management.- Binary
Classification for Lung Nodule based on Channel Attention.