Please use this identifier to cite or link to this item: http://103.99.128.19:8080/xmlui/handle/123456789/322
Title: Zebra-Crossing Detection and Recognition Based on Flood Fill Operation and Uniform Local Binary Pattern
Other Titles: International Conference on Electrical, Computer and Communication Engineering (ECCE-2019)
Authors: Meem, Mahinul Islam
Dhar, Pranab Kumar
Khaliluzzaman, Md.
Shimamura, Tetsuya
Keywords: Adaptive histogram equalization
Flood fill operation
Hough transform
Otsu’s method
Support vector machine
Uniform local binary pattern
Issue Date: 7-Feb-2019
Publisher: Faculty of Electrical and Computer Engineering, CUET
Series/Report no.: ECCE;
Abstract: Zebra-crossing region detection from a zebracrossing image is an important and demanding task to support visually impaired people to navigate the street crossing safely in the outdoor environments. In this paper, a zebra-crossing detection and recognition method is presented where zebracrossing region is detected by employing the image processing techniques such as adaptive histogram equalization, flood fill operation, and Hough transforms and is recognized through the uniform local binary pattern with support vector machine (SVM) classifier. For that, the contrast and sharpness of the zebracrossing image is improved by the adaptive histogram equalization if the image’s intensity value is less than an empirical threshold value. After that, the pre-processed zebra-crossing image is converted to the binary image by using the Otsu’s method. Furthermore, the morphological and flood fill operations are applied to the binary image to extract the largest candidate object. The edges of the largest candidate object are detected by utilizing the canny operator. From the edges, the potential longest horizontal edges are estimated by eliminating the vertical edges using four connected method and filtering the small edges using statistical threshold procedure. Finally, the potential parallel horizontal edges are justified as zebra-crossing edge lines by drawing the Hough lines and detect the zebra-crossing region of interest (ROI). Then, the SVM classifier is applied to the detected ROI region to recognize the zebra-crossing region where, rotational invariant uniform local binary pattern is utilized to extract the features of candidate region. Simulation results indicate that the proposed method effectively detects and recognizes zebra crossing regions from various zebra-crossing images. Moreover, it shows superior performance than the stateof- the art methods in terms of recognition
URI: http://103.99.128.19:8080/xmlui/handle/123456789/322
Appears in Collections:proceedings in CSE

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