Fuzzy Classification Based on Fractal Features for Undersea Image
نویسندگان
چکیده
Because of the specialty of the undersea channel and the complexity of imaging environment, serious impact on image segmentation and target identification is caused by several uncertain factors in undersea image. This paper proposes a fuzzy pattern recognition approach for undersea image based on fractal features, and realizes reliable target classification in undersea image. Experiments prove that this approach is effective to identify the non-structural targets such as undersea rock and chimney. Keyword: Fuzzy theory, fractal analysis, image classification, undersea image.
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