AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM
This study discusses the application of several neural networks with minimal computational requirements to be able to calibrate perturbated images based on template images. The need for this research is to reduce the cost of observing water level which generally uses conventional sensors which re...
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id-itb.:699822022-12-22T08:58:58ZAUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM Luscovius Purba, Poppy Indonesia Theses Squeeze-HomographyNet, YOLOv5, Homography, Water Level. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/69982 This study discusses the application of several neural networks with minimal computational requirements to be able to calibrate perturbated images based on template images. The need for this research is to reduce the cost of observing water level which generally uses conventional sensors which require higher maintenance costs compared to the use of Artificial Intelligence (AI) and CCTV cameras as sensors. To overcome the large internet needs, image processing is carried out on site using a neural network which can reduce computational needs. The initial stage is to detect symbols that have been designed with YOLOv5 and validate the YOLOv5 results to ensure the sequence of symbols matches the template image. YOLOv5 results that have been validated will be used as input data for Squeeze-HomographyNet which has been developed and trained to perform perspective correction on perturbated measuring board images. The results of the calibrated image will be estimated as a cut-out of the measuring board in the main image to reduce computational requirements in the water surface line detection phase. Furthermore, in the measuring board image the water surface line will be detected and the distance measured with the closest validated symbol and a comparison scale is used between the actual distance (cm) and the image distance (pixels) to measure the entire water level in the observation image. The results of the system development find that in the best case the system can produce 90.77% accuracy for the water level prediction. The resulting neural network model is quite small, around 41.165 Kb for YOLOv5 and 10.987 Kb for Squeeze-HomographyNet. text |
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This study discusses the application of several neural networks with minimal
computational requirements to be able to calibrate perturbated images based on
template images. The need for this research is to reduce the cost of observing water
level which generally uses conventional sensors which require higher maintenance
costs compared to the use of Artificial Intelligence (AI) and CCTV cameras as
sensors. To overcome the large internet needs, image processing is carried out on
site using a neural network which can reduce computational needs.
The initial stage is to detect symbols that have been designed with YOLOv5 and
validate the YOLOv5 results to ensure the sequence of symbols matches the
template image. YOLOv5 results that have been validated will be used as input data
for Squeeze-HomographyNet which has been developed and trained to perform
perspective correction on perturbated measuring board images. The results of the
calibrated image will be estimated as a cut-out of the measuring board in the main
image to reduce computational requirements in the water surface line detection
phase. Furthermore, in the measuring board image the water surface line will be
detected and the distance measured with the closest validated symbol and a
comparison scale is used between the actual distance (cm) and the image distance
(pixels) to measure the entire water level in the observation image. The results of
the system development find that in the best case the system can produce 90.77%
accuracy for the water level prediction. The resulting neural network model is quite
small, around 41.165 Kb for YOLOv5 and 10.987 Kb for Squeeze-HomographyNet. |
format |
Theses |
author |
Luscovius Purba, Poppy |
spellingShingle |
Luscovius Purba, Poppy AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM |
author_facet |
Luscovius Purba, Poppy |
author_sort |
Luscovius Purba, Poppy |
title |
AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM |
title_short |
AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM |
title_full |
AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM |
title_fullStr |
AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM |
title_full_unstemmed |
AUTOMATIC CALIBRATION USING YOLOV5 AND DEEP HOMOGRAPHY - PERSPECTIVE CORRECTION IN WATER LEVEL MEASUREMENT SYSTEM |
title_sort |
automatic calibration using yolov5 and deep homography - perspective correction in water level measurement system |
url |
https://digilib.itb.ac.id/gdl/view/69982 |
_version_ |
1822278635455774720 |