TY - JOUR AB - Purpose An accurate detection of overhead ground wire under open surroundings with varying illumination is the premise of reliable line grasping with the off-line arm when the inspection robot cross obstacle automatically. This paper aims to propose an improved approach which is called adaptive homomorphic filter and supervised learning (AHSL) for overhead ground wire detection.Design/methodology/approach First, to decrease the influence of the varying illumination caused by the open work environment of the inspection robot, the adaptive homomorphic filter is introduced to compensation the changing illumination. Second, to represent ground wire more effectively and to extract more powerful and discriminative information for building a binary classifier, the global and local features fusion method followed by supervised learning method support vector machine is proposed.Findings Experiment results on two self-built testing data sets A and B which contain relative older ground wires and relative newer ground wire and on the field ground wires show that the use of the adaptive homomorphic filter and global and local feature fusion method can improve the detection accuracy of the ground wire effectively. The result of the proposed method lays a solid foundation for inspection robot grasping the ground wire by visual servo.Originality/value This method AHSL has achieved 80.8 per cent detection accuracy on data set A which contains relative older ground wires and 85.3 per cent detection accuracy on data set B which contains relative newer ground wires, and the field experiment shows that the robot can detect the ground wire accurately. The performance achieved by proposed method is the state of the art under open environment with varying illumination. VL - 38 IS - 3 SN - 0260-2288 DO - 10.1108/SR-08-2017-0154 UR - https://doi.org/10.1108/SR-08-2017-0154 AU - Ye Xuhui AU - Wu Gongping AU - Fan Fei AU - Peng XiangYang AU - Wang Ke PY - 2018 Y1 - 2018/01/01 TI - Overhead ground wire detection by fusion global and local features and supervised learning method for a cable inspection robot T2 - Sensor Review PB - Emerald Publishing Limited SP - 376 EP - 386 Y2 - 2024/04/19 ER -