2014
DOI: 10.3390/s140609451
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Sparse Representation for Infrared Dim Target Detection via a Discriminative Over-Complete Dictionary Learned Online

Abstract: It is difficult for structural over-complete dictionaries such as the Gabor function and discriminative over-complete dictionary, which are learned offline and classified manually, to represent natural images with the goal of ideal sparseness and to enhance the difference between background clutter and target signals. This paper proposes an infrared dim target detection approach based on sparse representation on a discriminative over-complete dictionary. An adaptive morphological over-complete dictionary is tr… Show more

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Cited by 42 publications
(21 citation statements)
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“…In this paper, the structural Gaussian spatio-temporal over-complete dictionary is adopted to distinguish target spatio-temporal atom from background spatio-temporal atom automatically [18], and a target spatio-temporal atom and a background spatio-temporal atom are shown in Fig. 3.…”
Section: Joint Spatio-temporal Sparse Representationmentioning
confidence: 99%
“…In this paper, the structural Gaussian spatio-temporal over-complete dictionary is adopted to distinguish target spatio-temporal atom from background spatio-temporal atom automatically [18], and a target spatio-temporal atom and a background spatio-temporal atom are shown in Fig. 3.…”
Section: Joint Spatio-temporal Sparse Representationmentioning
confidence: 99%
“…[17][18][19] A traditional LCM for small infrared target detection was proposed 3 based on HSV. However, the region with high brightness PSEN which usually exists in the infrared image also have contrast differences with its surrounding areas; therefore, the LCM may leads to a high false alarm and a low signal-to-clutter ratio (SCR) 20 of the image. In order to deal with this problem, we propose an ILACM in which the structural feature of the small target is adequately considered.…”
Section: Improved Local Adaptive Contrast Measurementioning
confidence: 99%
“…Gao et al [7] built a co-detection model based on nonlinear weight and entry-wise weighted robust principal component analysis (RPCA), which can extract real targets accurately and suppress background clutters efficiently. Li et al [8] proposed an infrared dim target detection approach based on sparse representation on a discriminative over-complete dictionary, which can not only capture significant features of background clutters and dim targets, but also strengthen the sparse feature difference between the background and target. Kim et al [9] analyzed the characteristics of regional cluster and removed the false detection by means of spatial attribute-based classifications, the heterogeneous background removal filter, and temporal consistency filter.…”
Section: Introductionmentioning
confidence: 99%