Abstract

Aiming at the complex problem of image recognition feature extraction, this paper proposes an intelligent clothing design model based on parallel Gabor image feature extraction algorithm. Based on the intelligent parallel mode, the algorithm decomposes and merges the calculation process of the image Gabor transformation, decomposes the entire image Gabor feature extraction calculation process into a parallel part and a nonparallel part, and accelerates the parallel part by using multiple cores. The calculation results are then combined to achieve the purpose of multicore parallel acceleration of the entire calculation process. Secondly, based on the consideration of improving the real-time performance of the intelligent clothing design system, combined with the existing multicore environment, this paper uses the intelligent model to design and implement the image parallel Gabor feature extraction algorithm and uses image processing and analysis technology to analyze the visual elements of traditional clothing and identify and quantify to form a relatively complete clothing visual element evaluation system, which provides a basis for large-scale collection and automated evaluation of clothing visual effects, as well as clothing trend tracking and prediction. Experiments show that the algorithm can effectively shorten the calculation time of Gabor image feature extraction and can obtain a good speedup in a multicore environment. At the same time, it combines with a multiscale intelligent clothing classification algorithm, on the basis of the VS2008 platform, combined with OpenCV 2.0, designed and implemented an intelligent clothing design system, and conducted experiments and system tests. The experimental results show that the algorithm given in this paper can accurately segment fabric defects from the background, which proves that the detection algorithm has a good detection effect. Simulation results show that the algorithm proposed in this paper can more accurately identify the state of clothing features, and the real-time performance of intelligent clothing design in a multicore environment has been improved to a certain extent.

Highlights

  • Image recognition is one of the main technologies for identity recognition using biometric technology, which is used in many fields

  • Based on the study of several image recognition algorithms, the principle of Gabor wavelet transform, and its application in image feature extraction, this paper uses Gabor wavelet transform to construct an image elastic map to determine the image feature template; a simple image recognition system was designed in combination with PCA, and corresponding experiments were carried out on image databases

  • A simple image recognition system based on Gabor+PCA is designed

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Summary

Introduction

Image recognition is one of the main technologies for identity recognition using biometric technology, which is used in many fields. Image recognition technology involves many professional fields, including clothing industrial intelligence, image processing and analysis, image coding, pattern recognition, computer vision, biometric technology, and other fields. It is one of the focuses of research in recent years [1]. Due to the differences in the characteristics of the image itself and the different feature extraction methods, it is difficult to find a universally applicable clothing feature pattern recognition algorithm. The experimental results show that the recognition rate of the multiscale classification algorithm proposed in this paper is better than the existing intelligent clothing design methods based on partial features

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