22 research outputs found

    A Trainable Similarity Measure for Image Classificarion

    No full text
    In object recognition problems a two-stage system is usually adopted composed of a fast and simple detector and a more complex classifier. This paper studies a design of the second stage classifier based on the recently proposed trainable similarity measure which is specifically designed for supervised classification of images. Common global measures such as correlation suffer from uninformative pixels and occlusions. The proposed measure is based on local matches in a set of regions within an image which increases its robustness. The configuration of local regions is derived specifically for each prototype by a training procedure. The paper compares the classifiers built using the trainable similarity to the state-of-the-art AdaBoost classifiers on a real-world pedestrian recognition problem. The paper illustrates that for a given range of sample sizes the trainable similarity represents a better solution for secondstage classification than the AdaBoost algorithm which requires significantly larger training sets. 1
    corecore