five

Multisense

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IEEE2026-04-17 收录
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https://ieee-dataport.org/documents/multisense
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Dataset DescriptionThis dataset, named MultiSense, is designed to enhance disaster response by providing comprehensive data from multiple sources. It comes in two versions: balanced and unbalanced. The dataset consists of five distinct classes, each representing different types of events or conditions:Earthquake: This class includes imagery and video footage related to earthquake damage. The data captures the aftermath of seismic events, showcasing various degrees of destruction.War: This class contains data depicting war-related damage. It includes imagery and videos from conflict zones, highlighting the impact of warfare on infrastructure and urban areas.Hurricane: This class encompasses data related to hurricane damage. It includes imagery and footage showing the effects of strong winds, flooding, and storm surges associated with hurricanes.Flood: This class features imagery and videos of flood damage. It documents areas affected by flooding, capturing the extent of water damage to buildings, roads, and landscapes.No Damage: This class provides imagery and footage of areas with no significant damage. It serves as a control group, representing normal conditions without the impact of natural disasters or conflicts.The balanced version of the dataset contains an equal number of samples from each class, ensuring that the model trained on this data does not favor any particular class due to data imbalance. On the other hand, the unbalanced version reflects the real-world distribution of such events, where some types of damage may be more prevalent than others.Both versions of the dataset include high-resolution satellite imagery and drone footage, offering a rich and diverse set of data for training and testing machine learning models aimed at disaster detection and response. The balanced dataset is ideal for training models that require equal representation of each class, while the unbalanced dataset provides a more realistic scenario for model evaluation.
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