2022
DOI: 10.3390/s22228657
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A Novel Fuzzy Controller for Visible-Light Camera Using RBF-ANN: Enhanced Positioning and Autofocusing

Abstract: To obtain high-precision for focal length fitting and improve the visible-light camera autofocusing speed, simultaneously, the backlash caused by gear gaps is eliminated. We propose an improved RBF (Radical Basis Function) adaptive neural network (ANN) FUZZY PID (Proportional Integral Derivative) position closed-loop control algorithm to achieve the precise positioning of zoom and focus lens groups. Thus, the Levenberg–Marquardt iterative algorithm is used to fit the focal length, and the improved area search … Show more

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Cited by 5 publications
(3 citation statements)
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“…Additionally, this research combines the obstacle avoidance method based on dichotomy, which reduces the false obstacle avoidance and secondary obstacle avoidance phenomenon during the operation and realizes the accurate obstacle avoidance of the robot. In order to simplify the process of robot acquiring environmental information, the control system can not only accurately detect static obstacles, improving the real-time performance of robot obstacle avoidance control [13]. The specific control process when the robot moves forward is shown in Figure 3: In Figure 3, when the robot is in the forward state, to improve the system control's real-time performance, the data collected by No.…”
Section: Figure 2: the Area Detected By The Ultrasonic Arraymentioning
confidence: 99%
“…Additionally, this research combines the obstacle avoidance method based on dichotomy, which reduces the false obstacle avoidance and secondary obstacle avoidance phenomenon during the operation and realizes the accurate obstacle avoidance of the robot. In order to simplify the process of robot acquiring environmental information, the control system can not only accurately detect static obstacles, improving the real-time performance of robot obstacle avoidance control [13]. The specific control process when the robot moves forward is shown in Figure 3: In Figure 3, when the robot is in the forward state, to improve the system control's real-time performance, the data collected by No.…”
Section: Figure 2: the Area Detected By The Ultrasonic Arraymentioning
confidence: 99%
“…In [19][20][21], they mainly use RBF neural networks to improve controller control capability by optimizing its parameters when faced with external interference. This technique can also be combined with optimization algorithms to further exploit the parameter search capability of RBF neural networks, where, in the literature, References [22,23] combine particle swarms, fuzzy control theory, and RBF neural networks to achieve rapid optimization of controller parameters and thus improve control performance.…”
Section: Introductionmentioning
confidence: 99%
“…Conventional PID controllers are widely used in various fields, such as image processing, process industries as exploited in [ 1 , 2 , 3 ] because of their structural simplicity, design easiness, availability of various tuning methods, etc. However, the system performance is affected in the presence of non-linearities and system uncertainties.…”
Section: Introductionmentioning
confidence: 99%