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Journal ArticleDOI

IMORL: Incremental Multiple-Object Recognition and Localization

Haibo He, +1 more
- 01 Oct 2008 - 
- Vol. 19, Iss: 10, pp 1727-1738
TLDR
A neural network with a multilayer perceptron (MLP) structure as the base learning model is used and results show the effectiveness of this method in various video stream data sets.
Abstract
This paper proposes an incremental multiple-object recognition and localization (IMORL) method. The objective of IMORL is to adaptively learn multiple interesting objects in an image. Unlike the conventional multiple-object learning algorithms, the proposed method can automatically and adaptively learn from continuous video streams over the entire learning life. This kind of incremental learning capability enables the proposed approach to accumulate experience and use such knowledge to benefit future learning and the decision making process. Furthermore, IMORL can effectively handle variations in the number of instances in each data chunk over the learning life. Another important aspect analyzed in this paper is the concept drifting issue. In multiple-object learning scenarios, it is a common phenomenon that new interesting objects may be introduced during the learning life. To handle this situation, IMORL uses an adaptive learning principle to autonomously adjust to such new information. The proposed approach is independent of the base learning models, such as decision tree, neural networks, support vector machines, and others, which provide the flexibility of using this method as a general learning methodology in multiple-object learning scenarios. In this paper, we use a neural network with a multilayer perceptron (MLP) structure as the base learning model and test the performance of this method in various video stream data sets. Simulation results show the effectiveness of this method.

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Citations
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COMPOSE: Compacted object sample extraction a framework for semi-supervised learning in nonstationary environments

Karl Dyer
TL;DR: The water needs of this region have changed in recent years from being primarily for agricultural purposes to domestic and industrial uses currently and in the past also for industrial and industrial purposes.
Proceedings ArticleDOI

New ensemble method for classification of data streams

TL;DR: A new ensemble learning method is proposed for data stream classification in presence of concept drift that is capable of detecting changes and adapting to new concepts which appears in the stream.
DissertationDOI

Classificação de fluxos de dados não estacionários com algoritmos incrementais baseados no modelo de misturas gaussianas

TL;DR: Oliveira et al. as mentioned in this paper proposed a new incremental algorithm for data stream with concept drifts based on Gaussian Mixture Models, which is compared to various algorithms widely used in the literature, and the results show that it is competitive with them in various scenarios.
Book ChapterDOI

Multi-Object Recognition Using a Feature Descriptor and Neural Classifier

TL;DR: In this paper , an improved HOG and a classifier with a neural approach was proposed to produce a robust system for object recognition. But the proposed method is not suitable for multi-class classification.
Book ChapterDOI

Automatic Detection and Recognition of Products and Planogram Conformity Analysis in Real Time on Store Shelves

TL;DR: In this paper , a robust retail product recognition on store shelves images with the aim of solving planogram conformity rate estimation problem is investigated, which combines the first step with a fast version of ASIFT with CUDA acceleration and color histogram to find missing or new products.
References
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Proceedings ArticleDOI

Object recognition from local scale-invariant features

TL;DR: Experimental results show that robust object recognition can be achieved in cluttered partially occluded images with a computation time of under 2 seconds.
Journal ArticleDOI

A Decision-Theoretic Generalization of On-Line Learning and an Application to Boosting

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Proceedings Article

Experiments with a new boosting algorithm

TL;DR: This paper describes experiments carried out to assess how well AdaBoost with and without pseudo-loss, performs on real learning problems and compared boosting to Breiman's "bagging" method when used to aggregate various classifiers.
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