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Journal ArticleDOI

Granular Flow Graph, Adaptive Rule Generation and Tracking

TLDR
A new method of adaptive rule generation in granular computing framework is described based on rough rule base and granular flow graph, and applied for video tracking, and it is shown that the neighborhood granulation provides a balanced tradeoff between speed and accuracy as compared to pixel level computation.
Abstract
A new method of adaptive rule generation in granular computing framework is described based on rough rule base and granular flow graph, and applied for video tracking. In the process, several new concepts and operations are introduced, and methodologies formulated with superior performance. The flow graph enables in defining an intelligent technique for rule base adaptation where its characteristics in mapping the relevance of attributes and rules in decision-making system are exploited. Two new features, namely, expected flow graph and mutual dependency between flow graphs are defined to make the flow graph applicable in the tasks of both training and validation. All these techniques are performed in neighborhood granular level. A way of forming spatio-temporal 3-D granules of arbitrary shape and size is introduced. The rough flow graph-based adaptive granular rule-based system, thus produced for unsupervised video tracking, is capable of handling the uncertainties and incompleteness in frames, able to overcome the incompleteness in information that arises without initial manual interactions and in providing superior performance and gaining in computation time. The cases of partial overlapping and detecting the unpredictable changes are handled efficiently. It is shown that the neighborhood granulation provides a balanced tradeoff between speed and accuracy as compared to pixel level computation. The quantitative indices used for evaluating the performance of tracking do not require any information on ground truth as in the other methods. Superiority of the algorithm to nonadaptive and other recent ones is demonstrated extensively.

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Citations
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Journal ArticleDOI

Granular computing for data analytics: a manifesto of human-centric computing

TL;DR: This study identifies the principles of Granular Computing, shows how information granules are constructed and subsequently used in describing relationships present among the data, and advocates that the level of abstraction can be flexibly adjusted through Granular computing.
Journal ArticleDOI

Deep learning in multi-object detection and tracking: state of the art

TL;DR: In this article, the authors provide a comprehensive overview of object detection and tracking using deep learning (DL) networks and compare the performance of different object detectors and trackers, including the recent development in granulated DL models.
Journal ArticleDOI

Attribute-Driven Granular Model for EMG-Based Pinch and Fingertip Force Grand Recognition

TL;DR: An attribute-driven granular model (AGrM) under a machine-learning scheme that achieved comparable pinch recognition accuracy but was of lowest computational cost and highest force grand prediction accuracy.
Journal ArticleDOI

Boosted K-nearest neighbor classifiers based on fuzzy granules

TL;DR: Theoretical analysis and experimental results show that FGKNN and BFGKNN have better performance than that of the methods mentioned above if the appropriate parameters are given.
Journal ArticleDOI

Granulated deep learning and Z-numbers in motion detection and object recognition

TL;DR: The article deals with the problems of motion detection, object recognition, and scene description using deep learning in the framework of granular computing and Z-numbers and shows a balanced trade-off between speed and accuracy as compared to pixel level learning in tracking and recognition.
References
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Object Tracking via Partial Least Squares Analysis

TL;DR: An object tracking algorithm that learns a set of appearance models for adaptive discriminative object representation that exploits both the ground truth appearance information of the target labeled in the first frame and the image observations obtained online, thereby alleviating the tracking drift problem caused by model update.
Journal ArticleDOI

Rule learning for classification based on neighborhood covering reduction

TL;DR: This work extends Pawlak's rough set theory to numerical feature spaces by replacing partition of universe with neighborhood covering and derive a neighborhood covering reduction based approach to extracting rules from numerical data.
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Rough sets methods in feature reduction and classification

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Journal ArticleDOI

Rough-fuzzy MLP: modular evolution, rule generation, and evaluation

TL;DR: A methodology is described for evolving a Rough-fuzzy multi layer perceptron with modular concept using a genetic algorithm to obtain a structured network suitable for both classification and rule extraction.
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Generalized Rough Sets, Entropy, and Image Ambiguity Measures

TL;DR: This paper proposes classes of entropy measures based on rough set theory and its certain generalizations, and performs rigorous theoretical analysis to provide some properties which they satisfy and proposes a new measure called average image ambiguity.
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