Abstract:An image crack detection method with multiscale downsampled normalized cut is proposed to address the problems of low precision for edge detection and timeconsuming for feature vector solution with the multiscale normalized cut. Firstly, the feature of halfreconstruction of the antisymmetrical biorthogonal wavelet is used to extract the multiscale edge features of the test image Then, combining the strength feature and location feature of each scale, the multiscale similarity matrix and multiscale normalized similarity matrix are obtained. Spectral segmentation method is utilized to calculate the downsampled feature vector of the multiscale similarity matrix after downsampling. Finally, by multiplying the multiscale normalized similarity matrix with the downsampled feature vectors, the segmentation result is obtained after discretization. Experimental results indicate that the proposed method improves the accuracy of detection and reduces the computational time on three image datasets, compared with other methods.