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

被引:0
作者
Sankar K. Pal
Debasmita Bhoumik
Debarati Bhunia Chakraborty
机构
[1] Indian Statistical Institute,Center for Soft Computing Research
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Deep learning; Granular computing; Rough sets; Video tracking; Object recognition; Z-numbers;
D O I
暂无
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学科分类号
摘要
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. Since deep learning is computationally intensive, whereas granular computing, on the other hand, leads to computation gain, a judicious integration of their merits is made so as to make the learning mechanism computationally efficient. Further, it is shown how the concept of z-numbers can be used to quantify the abstraction of semantic information in interpreting a scene, where subjectivity is of major concern, through recognition of its constituting objects. The system, thus developed, involves recognition of both static objects in the background and moving objects in foreground separately. Rough set theoretic granular computing is adopted where rough lower and upper approximations are used in defining object and background models. During deep learning, instead of scanning the entire image pixel by pixel in the convolution layer, we scan only the representative pixel of each granule. This results in a significant gain in computation time. Arbitrary-shaped and sized granules, as expected, perform better than regular-shaped rectangular granules or fixed-sized granules. The method of tracking is able to deal efficiently with various challenging cases, e.g., tracking partially overlapped objects and suddenly appeared objects. Overall, the granulated system shows a balanced trade-off between speed and accuracy as compared to pixel level learning in tracking and recognition. The concept of using Z-numbers, in providing a granulated linguistic description of a scene, is unique. This gives a more natural interpretation of object recognition in terms of certainty toward scene understanding.
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页码:16533 / 16548
页数:15
相关论文
共 57 条
[1]  
Yilmaz A(2006)Object tracking: a survey Acm Comput Surv (CSUR) 38 13-127
[2]  
Javed O(1997)Toward a theory of fuzzy information granulation and its centrality in human reasoning and fuzzy logic Fuzzy Sets Syst 90 111-2517
[3]  
Shah M(2005)Granular computing, rough entropy and object extraction Pattern Recognit Lett 26 2509-4009
[4]  
Zadeh LA(2013)Granulation, rough entropy and spatiotemporal moving object detection Appl Soft Comput 13 4001-370
[5]  
Pal SK(2016)Neighborhood granules and rough rule-base in tracking Nat Comput 15 359-4107
[6]  
Uma Shankar B(2017)Granular flow graph, adaptive rule generation and tracking IEEE Trans Cybern 47 4096-2540
[7]  
Mitra P(2015)Deep learning Nature 521 436-228
[8]  
Debarati Chakraborty B(2018)Good features to correlate for visual tracking IEEE Trans Image Process 27 2526-2368
[9]  
Shankar U(2015)Locally orderless tracking Int J Comput Vis 111 213-231
[10]  
Pal SK(2014)Robust object tracking via sparse collaborative appearance model IEEE Trans Image Process 23 2356-191