TY - JOUR
T1 - A prototype of on-line extraction and three-dimensional characterisation of wear particle features from video sequence
AU - Wu, Hongkun
AU - Kwok, Ngai Ming
AU - Liu, Sanchi
AU - Wu, Tonghai
AU - Peng, Zhongxiao
PY - 2016
Y1 - 2016
N2 - Wear particles in lubricants carry valuable information about machine wear status which is useful in machine condition monitoring. For wear analysis, wear particles are often imaged and their features are extracted. However, the particle morphology acquired from current 2-dimensional (2-D) images does not contain thickness information which can be critical in wear mechanism interpretation. In this paper, we present the development of a video based system to extend the particle information in 3-dimension (3-D). The proposed method contains three main procedures including: particle extraction using a Gaussian mixture model, multiple particle tracking with Kalman filter, and 3-D feature reconstruction by the shape-from-silhouette method. This framework ensures that wear particles are correctly extracted, and their 3-D morphological features are obtained. It also can be regarded as a potential option for on-line particle monitoring. The performance of this method was demonstrated by analysing wear particles generated from a four-ball machine and a spur gear box, and verified by computer simulations. Results indicated that 3-D features of wear particles were obtained with satisfactory accuracy.
AB - Wear particles in lubricants carry valuable information about machine wear status which is useful in machine condition monitoring. For wear analysis, wear particles are often imaged and their features are extracted. However, the particle morphology acquired from current 2-dimensional (2-D) images does not contain thickness information which can be critical in wear mechanism interpretation. In this paper, we present the development of a video based system to extend the particle information in 3-dimension (3-D). The proposed method contains three main procedures including: particle extraction using a Gaussian mixture model, multiple particle tracking with Kalman filter, and 3-D feature reconstruction by the shape-from-silhouette method. This framework ensures that wear particles are correctly extracted, and their 3-D morphological features are obtained. It also can be regarded as a potential option for on-line particle monitoring. The performance of this method was demonstrated by analysing wear particles generated from a four-ball machine and a spur gear box, and verified by computer simulations. Results indicated that 3-D features of wear particles were obtained with satisfactory accuracy.
UR - https://hdl.handle.net/1959.7/uws:63519
U2 - 10.1016/j.wear.2016.09.024
DO - 10.1016/j.wear.2016.09.024
M3 - Article
SN - 0043-1648
VL - 368-369
SP - 314
EP - 325
JO - Wear
JF - Wear
ER -