2021
DOI: 10.1109/access.2021.3101490
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Detecting Power Lines Using Point Instance Network for Distribution Line Inspection

Abstract: Power outages can disrupt daily domestic activities as well as the economy as operations are hampered when they occur. They can decrease work productivity by delaying operations that require electricity. The key solution to this problem is to ensure that there are fewer or no power interruptions. This can be achieved by ensuring secure and continuous network operations through regular maintenance and inspection. However, the traditional inspection technique of foot patrol is risky, laborious, and timeconsuming… Show more

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Cited by 15 publications
(2 citation statements)
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“…In order to solve the above problems, the attitude sensor is used to sense the own attitude of robot so as to obtain the inclination of the wire indirectly [23,24]. e outputs of these sensors are calibrated by the low-power processor in the sensor, and then, these outputs are fused by the complementary filtering algorithm or extended Kalman algorithm, and the attitude quaternion characterizing the inclination of the transmission wire is obtained.…”
Section: Automatic Control Of Lifting Force Based On Verticalmentioning
confidence: 99%
“…In order to solve the above problems, the attitude sensor is used to sense the own attitude of robot so as to obtain the inclination of the wire indirectly [23,24]. e outputs of these sensors are calibrated by the low-power processor in the sensor, and then, these outputs are fused by the complementary filtering algorithm or extended Kalman algorithm, and the attitude quaternion characterizing the inclination of the transmission wire is obtained.…”
Section: Automatic Control Of Lifting Force Based On Verticalmentioning
confidence: 99%
“…Mazzetto et al [12] worked out deep learning-based methodologies for visual inspection while leaving tiny footprints in the manufacturing environment and exploring it as an end-to-end tool to ease CVSs setup by four proofs of concept for a real automotive assembly line based on models for object, semantic segmentation, and anomaly detection. Sumagayan et al [13] developed a new compensation method for centerline measurement of oil and gas pipeline with the mean of absolute position error reduction of 76.9%. Liu et al [14] depicted the system's overall design ideas, functions, and processes with implementation methods for the real-time update of the whole process quality inspection data.…”
Section: Introductionmentioning
confidence: 99%