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Scale-independent object detection with an implicit shape model
Author(s) -
Axel Furlan,
D. Marzorati,
Domenico G. Sorrenti
Publication year - 2009
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1049/ic.2009.0235
Subject(s) - computer science , robustness (evolution) , artificial intelligence , scale (ratio) , object detection , computer vision , object (grammar) , measure (data warehouse) , noise (video) , probabilistic logic , set (abstract data type) , pattern recognition (psychology) , machine learning , data mining , image (mathematics) , physics , quantum mechanics , biochemistry , chemistry , gene , programming language
In this paper we propose an improvement to the implicit shape model (ISM) based robust object detection system proposed by Leibe et al. Object detection with ISM allows to approach the classification and tracking in a probabilistic way with multiple hypotheses. Unlike the original approach, our method is independent from object scale in the training sets, and this allows to work with a much smaller training sets and also to avoid to supply information about scale to the trainer. This is done while maintaining the robustness of the original approach. Leibe et al. mentioned a potential solution to overcome the scale problem in the training set, i.e., the usage of the scale produced by the local descriptor. Our proposal is different: since we believe that the scale measure generated by local descriptors is subject to noise, we try to walk around this noise by estimating the scale measure from the only evidence collected in the image.

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