Apple Shape Classification Method Based on Wavelet Moment

Autor: Jiangsheng Gui, Qing Zhang, Li Hao, Xiaoan Bao
Jazyk: angličtina
Rok vydání: 2014
Předmět:
Zdroj: Sensors & Transducers, Vol 178, Iss 9, Pp 182-187 (2014)
ISSN: 1726-5479
2306-8515
Popis: Shape is not only an important indicator for assessing the grade of the apple, but also the important factors for increasing the value of the apple. In order to improve the apple shape classification accuracy rate, an approach for apple shape sorting based on wavelet moments was proposed, the image was first subjected to a normalization process using its regular moments to obtain scale and translation invariance, the rotation invariant wavelet moment features were then extracted from the scale and translation normalized images and the method of cluster analysis was used for finished the shape classification. This method performs better than traditional approaches such as Fourier descriptors and Zernike moments, because of that Wavelet moments can provide time-domain and frequency domain window, which was verified by experiments. The normal fruit shape, mild deformity and severe deformity classification accuracy is 86.21 %, 85.82 %, 90.81 % by our method.
Databáze: OpenAIRE