4.6 Article

Research on Clothing Image Database Retrieval Algorithm Based on Wavelet Transform

期刊

JOURNAL OF MATHEMATICS
卷 2022, 期 -, 页码 -

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HINDAWI LTD
DOI: 10.1155/2022/6332592

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This paper proposes a clothing image database retrieval algorithm based on wavelet transform to improve the accuracy and speed of image retrieval. The algorithm represents the color consistency vector, adjusts the image size, discretizes the image using Hu invariant moment, and utilizes wavelet transform for retrieval.
Aiming at the problems of low image data retrieval accuracy and slow retrieval speed in the existing image database retrieval algorithms, this paper designs a clothing image database retrieval algorithm based on wavelet transform. Firstly, it represents the color consistency vector of clothing image, reflects the composition and distribution of image color through color histogram, quantifies the visual features of clothing image, aggregates them into a fixed size representation vector, and uses the Fair Value (FV) model to complete the collection of clothing image data. Then, the size of the clothing image is adjusted by using the size transformation technology, and the clothing pattern is divided into four moments with the same size. On this basis, the clothing image is discretized with the help of Hu invariant moment to complete the preprocessing of clothing image data. Finally, the generating function of wavelet transform is determined, and a cluster of functions is obtained through translation and expansion. The wavelet filter is decomposed into basic modules, and then, the wavelet transform is studied step by step. The clothing image data are regarded as a signal, split, predicted, and updated and input into the wavelet model, and the retrieval research of clothing image database is completed. The experimental results show that the design of the retrieval algorithm is reasonable, the retrieval data accuracy is high, and the retrieval speed is fast.

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