Grayscale Based Algorithm for Remote Sensing with Deep Learning
- URL: http://arxiv.org/abs/2110.08493v1
- Date: Sat, 16 Oct 2021 06:51:35 GMT
- Title: Grayscale Based Algorithm for Remote Sensing with Deep Learning
- Authors: Sai Ganesh CS, Aouthithiye Barathwaj SR Y, R. Azhagumurugan, R.
Swethaa S
- Abstract summary: The remote sensing of ground targets is more challenging because of the various factors that affect the propagation of light through different mediums from a satellite acquisition.
Supervised learning is a machine learning technique where the data is labelled according to their classes prior to the training.
In order to detect and classify the targets more accurately, YOLOv3, an algorithm based on bounding and anchor boxes is adopted.
The acquired images are analysed and trained with the grayscale based YOLO3 algorithm for target detection.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Remote sensing is the image acquisition of a target without having physical
contact with it. Nowadays remote sensing data is widely preferred due to its
reduced image acquisition period. The remote sensing of ground targets is more
challenging because of the various factors that affect the propagation of light
through different mediums from a satellite acquisition. Several Convolutional
Neural Network-based algorithms are being implemented in the field of remote
sensing. Supervised learning is a machine learning technique where the data is
labelled according to their classes prior to the training. In order to detect
and classify the targets more accurately, YOLOv3, an algorithm based on
bounding and anchor boxes is adopted. In order to handle the various effects of
light travelling through the atmosphere, Grayscale based YOLOv3 configuration
is introduced. For better prediction and for solving the Rayleigh scattering
effect, RGB based grayscale algorithms are proposed. The acquired images are
analysed and trained with the grayscale based YOLO3 algorithm for target
detection. The results show that the grayscale-based method can sense the
target more accurately and effectively than the traditional YOLOv3 approach.
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