Iterative filtering algorithm for color image based on visual sensitivity and improved directional distance

2013 ◽  
Vol 33 (11) ◽  
pp. 3204-3208
Author(s):  
Gaoxi LI ◽  
Jun CAO ◽  
Fuyuan ZHANG ◽  
Hua LI
2020 ◽  
Vol 28 ◽  
pp. 2003-2007
Author(s):  
Supriya ◽  
Charu Madhu ◽  
Arshdeep Singh ◽  
Nidhi Garg

2020 ◽  
Vol 1 (3) ◽  
pp. 141-148
Author(s):  
R. Ramalakshmi ◽  
S. Subash Prabhu ◽  
C. Balasubramanianb

The sensor network is used to observe surrounding area gathered and spread the information to other sink.The advantage of this network is used to improve life time and energy. The first sensor node or group of sensor nodesin the network runs out of energy. The aggregator node can send aggregate value to the base station. The sensornode can be used to assign initial weights for each node. This sensor node calculates weight for each node. Whichsensor node weight should be lowest amount they can act as a cluster head. The joint node can send false data to theaggregator node and then these node controls to adversary. The dependability at any given instant represents ancomprehensive behavior of participate to be various types of defects and misconduct. The adversary can sendinformation to aggregator node then complexity will be occurred. These nodes are used to reduce the energy andband width.


2019 ◽  
Vol 2019 ◽  
pp. 1-8
Author(s):  
Youssef Qranfal

An interest is often present in knowing evolving variables that are not directly observable; this is the case in aerospace, engineering control, medical imaging, or data assimilation. What is at hand, though, are time-varying measured data, a model connecting them to variables of interest, and a model of how to evolve the variables over time. However, both models are only approximation and the observed data are tainted with noise. This is an ill-posed inverse problem. Methods, such as Kalman filter (KF), have been devised to extract the time-varying quantities of interest. These methods applied to this inverse problem, nonetheless, are slow, computation wise, since they require large matrices multiplications and even matrix inversion. Furthermore, these methods are not usually suitable to impose some constraints. This article introduces a new iterative filtering algorithm based on alternating projections. Experiments were run with simulated moving projectiles and were compared with results using KF. The new optimization algorithm proves to be slightly more accurate than KF, but, more to the point, it is much faster in terms of CPU time.


Entropy ◽  
2018 ◽  
Vol 20 (12) ◽  
pp. 920 ◽  
Author(s):  
Yong Lv ◽  
Yi Zhang ◽  
Cancan Yi

The characteristics of the early fault signal of the rolling bearing are weak and this leads to difficulties in feature extraction. In order to diagnose and identify the fault feature from the bearing vibration signal, an adaptive local iterative filter decomposition method based on permutation entropy is proposed in this paper. As a new time-frequency analysis method, the adaptive local iterative filtering overcomes two main problems of mode decomposition, comparing traditional methods: modal aliasing and the number of components is uncertain. However, there are still some problems in adaptive local iterative filtering, mainly the selection of threshold parameters and the number of components. In this paper, an improved adaptive local iterative filtering algorithm based on particle swarm optimization and permutation entropy is proposed. Firstly, particle swarm optimization is applied to select threshold parameters and the number of components in ALIF. Then, permutation entropy is used to evaluate the mode components we desire. In order to verify the effectiveness of the proposed method, the numerical simulation and experimental data of bearing failure are analyzed.


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