This paper proposes a method for classifying the river state (a flood risk exists or not) from river surveillance camera images by combining patch-based processing and a convolutional neural network (CNN). Although CNN needs much training data, the number of river surveillance camera images is limited because flood does not frequently occur. Also, river surveillance camera images include objects that are irrelevant to the flood risk. Therefore, the direct use of CNN may not work well for the river state classification. To overcome this limitation, this paper develops patch-based processing for adjusting CNN to the river state classification. By increasing training data via the patch segmentation of an image and selecting patches that are re...
This dataset contains: - The networks weights (weights.zip) that were obtained and used in our pap...
Riverbed material has multiple functions in river ecosystems, such as habitats, feeding grounds, spa...
Data-driven and machine learning models have recently received increasing interest to resolve the co...
The interest in visual-based surveillance systems, especially in natural disaster applications, such...
Floods are major natural disasters which cause deaths and material damages every year. Monitoring th...
This package provides material that can be openly published for the paper "Scalable Flood Level Tren...
The interest in visual-based surveillance systems, especially in natural disaster applications, such...
This package provides material that can be openly published for the paper "Scalable Flood Level Tren...
Floods are among the most destructive natural hazards that affect millions of people across the worl...
The adverse effects of flood events have been increasing in the world due to the increasing occurren...
Flooding occurs frequently and causes loss of lives, and extensive damages to infrastructure and the...
Abstract The use of automated methods for detecting and classifying different types of labels in flo...
Object detection and segmentation algorithms evolved significantly in the last decade. Simultaneous ...
Rivers are among the world’s most threatened ecosystems. Enabled by the rapid development of drone t...
Flood-related image datasets from social media, smartphones, CCTV cameras, and unmanned aerial vehic...
This dataset contains: - The networks weights (weights.zip) that were obtained and used in our pap...
Riverbed material has multiple functions in river ecosystems, such as habitats, feeding grounds, spa...
Data-driven and machine learning models have recently received increasing interest to resolve the co...
The interest in visual-based surveillance systems, especially in natural disaster applications, such...
Floods are major natural disasters which cause deaths and material damages every year. Monitoring th...
This package provides material that can be openly published for the paper "Scalable Flood Level Tren...
The interest in visual-based surveillance systems, especially in natural disaster applications, such...
This package provides material that can be openly published for the paper "Scalable Flood Level Tren...
Floods are among the most destructive natural hazards that affect millions of people across the worl...
The adverse effects of flood events have been increasing in the world due to the increasing occurren...
Flooding occurs frequently and causes loss of lives, and extensive damages to infrastructure and the...
Abstract The use of automated methods for detecting and classifying different types of labels in flo...
Object detection and segmentation algorithms evolved significantly in the last decade. Simultaneous ...
Rivers are among the world’s most threatened ecosystems. Enabled by the rapid development of drone t...
Flood-related image datasets from social media, smartphones, CCTV cameras, and unmanned aerial vehic...
This dataset contains: - The networks weights (weights.zip) that were obtained and used in our pap...
Riverbed material has multiple functions in river ecosystems, such as habitats, feeding grounds, spa...
Data-driven and machine learning models have recently received increasing interest to resolve the co...