Evolving wavelet and scaling numbers for optimized image compression: forward, inverse, or both? A comparative study
نویسندگان
چکیده
The 9/7 wavelet is used for a wide variety of image compression tasks. Recent research, however, has established a methodology for using evolutionary computation to evolve wavelet and scaling numbers describing transforms that outperform the 9/7 under lossy conditions, such as those brought about by quantization or thresholding. This paper describes an investigation into which of three possible approaches to transform evolution produces the most effective transforms. The first approach uses an evolved forward transform for compression, but performs reconstruction using the 9/7 inverse transform; the second uses the 9/7 forward transform for compression, but performs reconstruction using an evolved inverse transform; the third uses simultaneously evolved forward and inverse transforms for compression and reconstruction. Three image sets are independently used for training: digital photographs, fingerprints, and satellite images. Results strongly suggest that it is impossible for evolved transforms to substantially improve upon the performance of the 9/7 without evolving the inverse transform.
منابع مشابه
Evolving Optimized Forward and Reverse Transforms using Genetic Algorithms on a Supercomputer
The use of digital images is increasing all the time in personal digital photography, medical imaging, and fingerprint image databases. The goal of this research is to improve the image quality of a given compressed digital image while maintaining the same file size of the image. Wavelet based image compression is improved upon by using Genetic Algorithms on a supercomputer to evolve transforms...
متن کاملEvolved Multiresolution Transforms for Optimized Image Compression and Reconstruction under Quantization
State-of-the-art image compression and reconstruction techniques utilize wavelets. Recently published research demonstrated that a genetic algorithm (GA) is capable of evolving non-wavelet transforms that consistently outperform wavelets when applied to a broad class of images under conditions subject to quantization error. This paper describes new results that build upon previous research by d...
متن کاملAn Inventive Approach for Image Scaling using Data Compression with Wavelet Transform Techniques
It presents the comparison of the performance of discrete wavelets and Single-level inverse discrete 1-D wavelet transform for implementation in a still image compression system. Image compression is a method through which we can calculate the storage space of images which will helpful to calculate THR SORH, L2 norm. The performances of these transforms are compared in terms of Mean squared err...
متن کاملOptimization of Energy Consumption in Image Transmission in Wireless Sensor Networks (WSNs) using a Hybrid Method
In wireless sensor networks (WSNs), sensor nodes have limited resources with regard to computation, storage, communication bandwidth, and the most important of all, energy supply. In addition, in many applications of sensor networks, we need to send images to a sink node. Therefore, we have to use methods for sending images in which the number and volume of packets are optim...
متن کاملInverse Problems in Image Processing
Inverse problems involve estimating parameters or data from inadequate observations; the observations are often noisy and contain incomplete information about the target parameter or data due to physical limitations of the measurement devices. Consequently, solutions to inverse problems are non-unique. To pin down a solution, we must exploit the underlying structure of the desired solution set....
متن کامل