TY - JOUR
T1 - Recognition algorithm for fault jumper connection plate of transmission network based on UAV
AU - Jiang, Shen Wang
AU - Xu, Ting Fa
AU - Zhang, Zeng
AU - Wu, Xin Qiao
N1 - Publisher Copyright:
© 2016 Science Press. All rights reserved.
PY - 2016/12/5
Y1 - 2016/12/5
N2 - Jumper connecting plate is an important part of electricity supply network. Jumper connecting plate’s status has a significant impact on electricity supply network’s proper operation. However, all the existing algorithms identify the fault of electricity supply network with a unified approach, so we have no specific approach on various types of transmission equipment failure and it will result in low recognition rate of jumper connecting plate. In order to recognize the fault jumper connecting plate efficiently, we use improved OTSU method for infrared image segmentation and use flood fill method to separate each segmentation area. Secondly, we delete small areas and fill holes through dilation and hole filling algorithm, then get connected area’s skeleton by the skeleton extraction algorithm. Thirdly, we find Harris corner point n skeleton image, and calculate USFPF feature. Finally, through the slope value recognition we can discern jumper connecting plate’s fault. As a result, the successful recognition rate for jumper connecting plate’s fault is 85. 71 %, themiss rate is 1 4. 28%, and themistake rate is 2. 8%. Experimental results show that the method has good results.
AB - Jumper connecting plate is an important part of electricity supply network. Jumper connecting plate’s status has a significant impact on electricity supply network’s proper operation. However, all the existing algorithms identify the fault of electricity supply network with a unified approach, so we have no specific approach on various types of transmission equipment failure and it will result in low recognition rate of jumper connecting plate. In order to recognize the fault jumper connecting plate efficiently, we use improved OTSU method for infrared image segmentation and use flood fill method to separate each segmentation area. Secondly, we delete small areas and fill holes through dilation and hole filling algorithm, then get connected area’s skeleton by the skeleton extraction algorithm. Thirdly, we find Harris corner point n skeleton image, and calculate USFPF feature. Finally, through the slope value recognition we can discern jumper connecting plate’s fault. As a result, the successful recognition rate for jumper connecting plate’s fault is 85. 71 %, themiss rate is 1 4. 28%, and themistake rate is 2. 8%. Experimental results show that the method has good results.
KW - Fared image
KW - Jumper connection plate
KW - Morphology
KW - Mtelligent recognition
UR - http://www.scopus.com/inward/record.url?scp=85007621947&partnerID=8YFLogxK
U2 - 10.3788/YJYXS20163112.1149
DO - 10.3788/YJYXS20163112.1149
M3 - Article
AN - SCOPUS:85007621947
SN - 1007-2780
VL - 31
SP - 1149
EP - 1155
JO - Chinese Journal of Liquid Crystals and Displays
JF - Chinese Journal of Liquid Crystals and Displays
IS - 12
ER -