In this paper we discuss the design of a digital image enhancement system based on a Hierarchical Fuzzy Logic (HFL) approach. Hierarchical fuzzy systems, first introduced in[10], are capable of substantially reducing the number of fuzzy rules to be learnt. We show how Evolutionary Algorithms (EAs) can be used to learn the fuzzy rules in a fuzzy image filter as opposed to determining the rules using human intuition. Results are presented for the well-known 'Lena' image and another 'Hill' image to prove that the newly designed hierarchical filter had acquired sufficient knowledge to enhance images which were not used during the training phase of the algorithm
A generalized neuro-fuzzy (NF) operator for removing impulse noise from highly corrupted digital ima...
In this paper we demonstrate how Co-Evolutionary Algorithms (CEAs) can be employed for optimization ...
Images and pictures are required as sources of information for analysis and interpretation in variou...
In this thesis we investigate how artificial intelligent techniques, namely fuzzy logic and genetic/...
In this paper we examine how different multi-layered fuzzy structures can be developed as fuzzy imag...
In this paper we develop a fuzzy image filter which consists of a multi-layered fuzzy structure base...
In this paper we present an effective scheme for impulse noise removal from highly corrupted images ...
With the advancement of internet and web technologies, there is an increasing interest in the develo...
Though, there has been an enormous research contribution on image de-noising methods which are also ...
In this paper, we develop a multilayered genetic based fuzzy image filter, which consists of fuzzy n...
In this paper a general framework for image improvement is proposed based on fuzzy logic with histog...
It is not a surprise that image processing is a growing research field. Vision in general and images...
Abstract — Image enhancement means to enrich the perception of images for human viewers. It can redu...
This paper presents a novel adaptive approach to image restoration using fuzzy spatial filtering opt...
A new fuzzy filter is presented for noise reduction of images corrupted with additive noise. The fil...
A generalized neuro-fuzzy (NF) operator for removing impulse noise from highly corrupted digital ima...
In this paper we demonstrate how Co-Evolutionary Algorithms (CEAs) can be employed for optimization ...
Images and pictures are required as sources of information for analysis and interpretation in variou...
In this thesis we investigate how artificial intelligent techniques, namely fuzzy logic and genetic/...
In this paper we examine how different multi-layered fuzzy structures can be developed as fuzzy imag...
In this paper we develop a fuzzy image filter which consists of a multi-layered fuzzy structure base...
In this paper we present an effective scheme for impulse noise removal from highly corrupted images ...
With the advancement of internet and web technologies, there is an increasing interest in the develo...
Though, there has been an enormous research contribution on image de-noising methods which are also ...
In this paper, we develop a multilayered genetic based fuzzy image filter, which consists of fuzzy n...
In this paper a general framework for image improvement is proposed based on fuzzy logic with histog...
It is not a surprise that image processing is a growing research field. Vision in general and images...
Abstract — Image enhancement means to enrich the perception of images for human viewers. It can redu...
This paper presents a novel adaptive approach to image restoration using fuzzy spatial filtering opt...
A new fuzzy filter is presented for noise reduction of images corrupted with additive noise. The fil...
A generalized neuro-fuzzy (NF) operator for removing impulse noise from highly corrupted digital ima...
In this paper we demonstrate how Co-Evolutionary Algorithms (CEAs) can be employed for optimization ...
Images and pictures are required as sources of information for analysis and interpretation in variou...