Accurate and Rapid Auto-Focus Methods Based on Image Quality Assessment for Telescope Observation

Aiming at improving the speed and accuracy of auto-focus for telescope observation, algorithms for image estimation and auto-focus were investigated and are discussed in this article. Based on the image quality assessment, the auto-focusing process of the telescope system is realized by using the mountain-climb search method. Several evaluation functions were tested in different scenarios. It is demonstrated that the Tenengrad image estimation function (IEF) is suitable for an instant and accurate auto-focus process of the telescope. Furthermore, we implemented sampling and dynamic adaptive focusing window (ES-DAFW) methods with the Tenengrad IEF to enhance the sensitivity and accuracy of the auto-focus process. The experimental results showed that our ES-DATW method can provide more accurate results in less time for the auto-focus process compared to the conventional approaches, especially for a sparse image. These results promise significant applications to the auto-focusing of other telescopes with image quality assessment.

[1]  Qian Zhang,et al.  Joint image registration and point spread function estimation for the super-resolution of satellite images , 2017, Signal Process. Image Commun..

[2]  Veysel Aslantas,et al.  Multi-focus image fusion based on optimal defocus estimation , 2017, Comput. Electr. Eng..

[3]  Hao Wu,et al.  Infrared Small Target Detection Based on Non-Convex Optimization with Lp-Norm Constraint , 2019, Remote. Sens..

[4]  Tae-Sun Choi,et al.  Focusing techniques , 1992, Other Conferences.

[5]  Zhe Du,et al.  Fish swarm window selection algorithm based on cell microscopic automatic focus , 2017, Cluster Computing.

[6]  Yang Li,et al.  A robust auto-focus measure based on inner energy , 2017 .

[7]  S. V. Voronov,et al.  Pseudogradient optimization of objective function in estimation of geometric interframe image deformations , 2012, Pattern Recognition and Image Analysis.

[8]  Seyed Hassan Tavassoli,et al.  Repeatability improvement of laser-induced breakdown spectroscopy using an auto-focus system , 2015 .

[9]  Zhiliang Hong,et al.  Modified fast climbing search auto-focus algorithm with adaptive step size searching technique for digital camera , 2003, IEEE Trans. Consumer Electron..

[10]  Tong Liu,et al.  Real-time object tracking for moving target auto-focus in digital camera , 2015, Electronic Imaging.

[11]  Ke Lu,et al.  The Auto-focus Method for Scanning Acoustic Microscopy by Sparse Representation , 2019 .

[12]  Takashi Jin,et al.  Optimal focus evaluated using Monte Carlo simulation in non-invasive neuroimaging in the second near-infrared window , 2019, MethodsX.

[13]  Qiang Wang,et al.  Phase Offset Tracking for Free Space Digital Coherent Optical Communication System , 2019 .

[14]  Feng Li,et al.  Rapid microscope auto‐focus method for uneven surfaces based on image fusion , 2019, Microscopy research and technique.

[15]  Sung-Jea Ko,et al.  An advanced video camera system with robust AF, AE, and AWB control , 2001, IEEE Trans. Consumer Electron..

[16]  Chenchen Deng,et al.  A fast face detection architecture for auto-focus in smart-phones and digital cameras , 2015, Science China Information Sciences.

[17]  Prajit Kulkarni Auto-focus algorithm based on statistical blur estimation , 2013, Electronic Imaging.

[18]  Bin Dong,et al.  Active contour model based on local bias field estimation for image segmentation , 2019, Signal Process. Image Commun..

[19]  Yunxia Xia,et al.  A New Disturbance Feedforward Control Method for Electro-Optical Tracking System Line-Of-Sight Stabilization on Moving Platform , 2018, Sensors.

[20]  Noriaki Suetake,et al.  A Robust Point Spread Function Estimation for Out-of-Focus Blurred and Noisy Images Based on a Distribution of Gradient Vectors on the Polar Plane , 2007 .

[21]  Xiangfen Zhang,et al.  A new auto-focus measure based on medium frequency discrete cosine transform filtering and discrete cosine transform , 2016 .