A novel bilinear discriminant feature line analysis (BDFLA) is proposed for image feature extraction. The nearest feature line (NFL) is a powerful classifier. Some NFL-based subspace algorithms were introduced recently. In most of the classical NFL-based subspace learning approaches, the input samples are vectors. For image classification tasks, the image samples should be transformed to vectors first. This process induces a high computational complexity and may also lead to loss of the geometric feature of samples. The proposed BDFLA is a matrix-based algorithm. It aims to minimise the within-class scatter and maximise the between-class scatter based on a two-dimensional (2D) NFL. Experimental results on two-image databases confirm the effectiveness.
CITATION STYLE
Yan, L., Li, J. B., Zhu, X., Pan, J. S., & Tang, L. (2015). Bilinear discriminant feature line analysis for image feature extraction. Electronics Letters, 51(4), 336–338. https://doi.org/10.1049/el.2014.3834
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