Attribute-based vehicle recognition using viewpoint-aware multiple instance SVMs

Applications of Computer Vision(2014)

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摘要
Vehicle recognition is a challenging task with many useful applications. State-of-the-art methods usually learn discriminative classifiers for different vehicle categories or different viewpoint angles, but little work has explored vehicle recognition using semantic visual attributes. In this paper, we propose a novel iterative multiple instance learning method to model local attributes and viewpoint angles together in the same framework. We expand the standard MISVM formulation to incorporate pairwise constraints based on viewpoint relations within positive exemplars. We show that our method is able to generate discriminative and semantic local attributes for vehicle categories. We also show that we can estimate viewpoint labels more accurately than baselines when these annotations are not available in the training set. We test the technique on the Stanford cars and INRIA vehicles datasets, and compare with other methods.
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关键词
automobiles,iterative methods,learning (artificial intelligence),object recognition,support vector machines,INRIA vehicles dataset,MISVM formulation,Stanford cars dataset,attribute-based vehicle recognition,discriminative classifier learning,discriminative local attribute generation,iterative multiple instance learning method,local attribute modeling,pairwise constraint,positive exemplars,semantic local attribute generation,semantic visual attributes,vehicle categories,viewpoint angles,viewpoint relations,viewpoint-aware multiple instance SVM
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