Title :
Object Detection With DoG Scale-Space: A Multiple Kernel Learning Approach
Author :
Nilufar, S. ; Ray, N. ; Hong Zhang
Author_Institution :
Dept. of Comput. Sci., Univ. of Alberta, Edmonton, AB, Canada
Abstract :
Difference of Gaussians (DoG) scale-space for an image is a significant way to generate features for object detection and classification. While applying DoG scale-space features for object detection/classification, we face two inevitable issues: dealing with high-dimensional data and selecting/weighting of proper scales. The scale selection process is mostly ad-hoc to present. In this paper, we propose a multiple kernel learning (MKL) method for both DoG scale selection/weighting and dealing with high-dimensional scale-space data. We design a novel shift invariant kernel function for DoG scale-space. To select only the useful scales in the DoG scale-space, a novel framework of MKL is also proposed. We utilize a 1-norm support vector machine (SVM) in the MKL optimization problem for sparse weighting of scales from DoG scale-space. The optimized data-dependent kernel accommodates only a few scales that are most discriminatory according to the large margin principle. With a 2-norm SVM, this learned kernel is applied to a challenging detection problem in oil sand mining: to detect large lumps in oil sand videos. We tested our method on several challenging oil sand data sets. Our method yields encouraging results on these difficult-to-process images and compares favorably against other popular multiple kernel methods.
Keywords :
Gaussian processes; image classification; learning (artificial intelligence); mining; object detection; oil sands; support vector machines; video signal processing; 1-norm support vector machine; 2-norm SVM; DoG scale-space; MKL method; MKL optimization problem; difference of Gaussians scale-sapce; difficult-to-process images; high-dimensional scale-space data; learned kernel; multiple kernel learning approach; object classification; object detection; oil sand data sets; oil sand mining; oil sand videos; optimized data-dependent kernel; proper scale selection; propoer scale weighting; scale selection process; shift invariant kernel function; sparse weighting; Convolution; Feature extraction; Kernel; Machine learning; Object detection; Support vector machines; Videos; 1-norm support vector machine (SVM); circular convolution; difference of Gaussian (DoG) scale-space; multiple kernel learning (MKL); Algorithms; Artificial Intelligence; Data Interpretation, Statistical; Image Enhancement; Image Interpretation, Computer-Assisted; Normal Distribution; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2012.2192130