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Full-Text Articles in Physical Sciences and Mathematics
Crash Detecting System Using Deep Learning, Yogesh Reddy Muddam
Crash Detecting System Using Deep Learning, Yogesh Reddy Muddam
Electronic Theses, Projects, and Dissertations
Accidents pose a significant risk to both individual and property safety, requiring effective detection and response systems. This work introduces an accident detection system using a convolutional neural network (CNN), which provides an impressive accuracy of 86.40%. Trained on diverse data sets of images and videos from various online sources, the model exhibits complex accident detection and classification and is known for its prowess in image classification and visualization.
CNN ensures better accident detection in various scenarios and road conditions. This example shows its adaptability to a real-world accident scenario and enhances its effectiveness in detecting early events. A key …
Classification Of Remote Sensing Image Data Using Rsscn-7 Dataset, Satya Priya Challa
Classification Of Remote Sensing Image Data Using Rsscn-7 Dataset, Satya Priya Challa
Electronic Theses, Projects, and Dissertations
A novel technique for remote sensing image scene classification is employed using the Compact Vision Transformer (CVT) architecture. This model strengthens the power of deep learning and self-attention algorithms to significantly intensify the accuracy and efficiency of scene classification in remote sensing imagery. Through extensive training and evaluation of the RSSCNN7 dataset, our CVT-based model has achieved an impressive accuracy rate of 87.46% on the original dataset. This remarkable result underscores the prospect of CVT models in the domain of remote sensing and underscores their applicability in real-world scenarios. Our report furnishes an elaborate account of the model's architecture, training …