Autofocus Dataset

Citation Author(s):
Zhijie
Hua
Submitted by:
Zhijie Hua
Last updated:
Mon, 07/10/2023 - 22:54
DOI:
10.21227/hwq3-pp20
License:
0
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Abstract 

In industrial microscopic detection, learning-based autofocus methods have empowered operators to acquire high-quality images quickly. Learning-based methods consist of two parts: network model and prior dataset. The network model, which approximates the relationship between input and output, exists fitting error. The prior dataset is made by sharpness metric and used for model training, while the limitations of the metric itself will affect the accuracy of the dataset. Both the model and dataset are prone to errors, thereby limiting the potential for further improvements in focusing accuracy. In this paper, a high-precision autofocus pipeline was introduced, which predicts the defocus distance from a single natural image. A new method for making datasets was proposed, which overcomes the limitations of the sharpness metric itself and improves the overall accuracy of the dataset. Furthermore, a lightweight regression network was built, namely Natural-image Defocus Prediction Model (NDPM), to improve the focusing accuracy. A realistic dataset of sufficient size was made to train all models. The experiment shows NDPM has better focusing performance compared with other models, with a mean focusing error of 0.422μm. 

 

Comments

for experiments

Submitted by vijay nidumolu on Mon, 12/04/2023 - 14:53