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Efficient Shallow Network for River Ice Segmentation
by
Scott, K. Andrea
, Sola, Daniel
in
Accuracy
/ Anchor ice
/ Convolution
/ Deep learning
/ efficient networks
/ Environmental risk
/ Flood predictions
/ Flooding
/ Frazil ice
/ Hydroelectric power
/ Hydroelectric power generation
/ Ice
/ Ice formation
/ Ice jams
/ Image segmentation
/ Latency
/ Machine learning
/ Network latency
/ Neural networks
/ Parameters
/ Real time
/ Remote sensing
/ River ice
/ Rivers
/ Sediment transport
/ Sediments
/ segmentation
/ Support vector machines
/ Training
/ Unmanned aerial vehicles
/ Water management
/ Water supply
2022
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Efficient Shallow Network for River Ice Segmentation
by
Scott, K. Andrea
, Sola, Daniel
in
Accuracy
/ Anchor ice
/ Convolution
/ Deep learning
/ efficient networks
/ Environmental risk
/ Flood predictions
/ Flooding
/ Frazil ice
/ Hydroelectric power
/ Hydroelectric power generation
/ Ice
/ Ice formation
/ Ice jams
/ Image segmentation
/ Latency
/ Machine learning
/ Network latency
/ Neural networks
/ Parameters
/ Real time
/ Remote sensing
/ River ice
/ Rivers
/ Sediment transport
/ Sediments
/ segmentation
/ Support vector machines
/ Training
/ Unmanned aerial vehicles
/ Water management
/ Water supply
2022
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Do you wish to request the book?
Efficient Shallow Network for River Ice Segmentation
by
Scott, K. Andrea
, Sola, Daniel
in
Accuracy
/ Anchor ice
/ Convolution
/ Deep learning
/ efficient networks
/ Environmental risk
/ Flood predictions
/ Flooding
/ Frazil ice
/ Hydroelectric power
/ Hydroelectric power generation
/ Ice
/ Ice formation
/ Ice jams
/ Image segmentation
/ Latency
/ Machine learning
/ Network latency
/ Neural networks
/ Parameters
/ Real time
/ Remote sensing
/ River ice
/ Rivers
/ Sediment transport
/ Sediments
/ segmentation
/ Support vector machines
/ Training
/ Unmanned aerial vehicles
/ Water management
/ Water supply
2022
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Journal Article
Efficient Shallow Network for River Ice Segmentation
2022
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Overview
River ice segmentation, used for surface ice concentration estimation, is important for validating river processes and ice-formation models, predicting ice jam and flooding risks, and managing water supply and hydroelectric power generation. Furthermore, discriminating between anchor ice and frazil ice is an important factor in understanding sediment transport and release events. Modern deep learning techniques have proved to deliver promising results; however, they can show poor generalization ability and can be inefficient when hardware and computing power is limited. As river ice images are often collected in remote locations by unmanned aerial vehicles with limited computation power, we explore the performance-latency trade-offs for river ice segmentation. We propose a novel convolution block inspired by both depthwise separable convolutions and local binary convolutions giving additional efficiency and parameter savings. Our novel convolution block is used in a shallow architecture which has 99.9% fewer trainable parameters, 99% fewer multiply–add operations, and 69.8% less memory usage than a UNet, while achieving virtually the same segmentation performance. We find that the this network trains fast and is able to achieve high segmentation performance early in training due to an emphasis on both pixel intensity and texture. When compared to very efficient segmentation networks such as LR-ASPP with a MobileNetV3 backbone, we achieve good performance (mIoU of 64) 91% faster during training on a CPU and an overall mIoU that is 7.7% higher. We also find that our network is able to generalize better to new domains such as snowy environments.
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