نتایج جستجو برای: instance

تعداد نتایج: 77147  

Journal: :International Journal of Computer Vision 2021

Instance recognition is rapidly advanced along with the developments of various deep convolutional neural networks. Compared to architectures networks, training process, which also crucial success detectors, has received relatively less attention. In this work, we carefully revisit standard practice and find that detection performance often limited by imbalance during generally consists in thre...

2011
Aykut Erdem Erkut Erdem

Multiple-instance learning (MIL) deals with learning under ambiguity, in which patterns to be classified are described by bags of instances. There has been a growing interest in the design and use of MIL algorithms as it provides a natural framework to solve a wide variety of pattern recognition problems. In this paper, we address MIL from a view that transforms the problem into a standard supe...

2005
Paul A. Viola John C. Platt Cha Zhang

A good image object detection algorithm is accurate, fast, and does not require exact locations of objects in a training set. We can create such an object detector by taking the architecture of the Viola-Jones detector cascade and training it with a new variant of boosting that we call MILBoost. MILBoost uses cost functions from the Multiple Instance Learning literature combined with the AnyBoo...

2010
Thomas Deselaers Vittorio Ferrari

We present MI-CRF, a conditional random field (CRF) model for multiple instance learning (MIL). MI-CRF models bags as nodes in a CRF with instances as their states. It combines discriminative unary instance classifiers and pairwise dissimilarity measures. We show that both forces improve the classification performance. Unlike other approaches, MI-CRF considers all bags jointly during training a...

Journal: :Inf. Sci. 2010
Amelia Zafra Sebastián Ventura

This paper introduces a new Grammar-Guided Genetic Programming algorithm for resolving multi-instance learning problems. This algorithm, called G3P-MI, is evaluated and compared to other multi-instance classification techniques in different application domains. Computational experiments show that the G3P-MI often obtains consistently better results than other algorithms in terms of accuracy, se...

Journal: :CoRR 2011
Emre Akbas Bernard Ghanem Narendra Ahuja

In this paper, we present a new multiple instance learning (MIL) method, called MIS-Boost, which learns discriminative instance prototypes by explicit instance selection in a boosting framework. Unlike previous instance selection based MIL methods, we do not restrict the prototypes to a discrete set of training instances but allow them to take arbitrary values in the instance feature space. We ...

2011
Bin Wu Xinghao Jiang Tanfeng Sun Shanfeng Zhang Xiqing Chu Chuxiong Shen Jingwen Fan

Horror scene detection is a research problem that has much practical use. The supervised method requires the training data to be labeled manually, which can be tedious and onerous. In this paper, a more challenging setting of the problems without complete information on data labels is investigated. In particular, as the horror scene is characterized by multiple features, this problem is formula...

2011
Athanasios Katsamanis James Gibson Matthew Black Shrikanth S. Narayanan

Analysis of audiovisual human behavior observations is a common practice in behavioral sciences. It is generally carried through by expert annotators who are asked to evaluate several aspects of the observations along various dimensions. This can be a tedious task. We propose that automatic classification of behavioral patterns in this context can be viewed as a multiple instance learning probl...

2012
Sid Ying-Ze Bao Yu Xiang Silvio Savarese

In this paper we introduce a new problem which we call object co-detection. Given a set of images with objects observed from two or multiple images, the goal of co-detection is to detect the objects, establish the identity of individual object instance, as well as estimate the viewpoint transformation of corresponding object instances. In designing a co-detector, we follow the intuition that an...

2010
Lauge Sørensen Marco Loog David M. J. Tax Wan-Jui Lee Marleen de Bruijne Robert P. W. Duin

In this paper, we propose to solve multiple instance learning problems using a dissimilarity representation of the objects. Once the dissimilarity space has been constructed, the problem is turned into a standard supervised learning problem that can be solved with a general purpose supervised classifier. This approach is less restrictive than kernelbased approaches and therefore allows for the ...

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