1 October 2004 Object recognition with the hybrid evolutionary algorithm and response analysis in security applications
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Abstract
The recognition of an object in a scene is a common and important task of electronic imaging arising in many defense and security applications. When the image of the sought object is significantly distorted, and the image of the scene is cluttered, noisy, and contains many objects, the commonly used methods based on correlation and comparison of the feature vectors of the images can show poor performance. The approach utilizing the particular model of the hybrid evolutionary algorithm based on image response analysis is proposed to solve the object recognition problem formulated as the global optimization problem. The computational experiments with two-dimensional grayscale images show that the proposed approach can solve complex object recognition problems. It is able to discriminate between objects having a high degree of similarity, and to detect the sought object in the large cluttered and multi-object scene.
©(2004) Society of Photo-Optical Instrumentation Engineers (SPIE)
Igor V. Maslov and Izidor Gertner "Object recognition with the hybrid evolutionary algorithm and response analysis in security applications," Optical Engineering 43(10), (1 October 2004). https://doi.org/10.1117/1.1790504
Published: 1 October 2004
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Cited by 1 scholarly publication.
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KEYWORDS
Evolutionary algorithms

Object recognition

Optimization (mathematics)

Dysprosium

Detection and tracking algorithms

Optical engineering

Image quality

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