Illumination invariant color segmentation method based on cluster center tree for traffic sign detection
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초록

This paper proposes a color segmentation method that can locate candidate regions of traffic signs accurately and reliably from real world images. In the real world, there are various light conditions which make the color segmentation very difficult problem. Hence, we propose an illumination invariant color segmentation method. The proposed method consists of two parts; 1) cluster center treebased segmentation 2) illumination estimation. Cluster center tree is trained for color segmentation. Illumination estimation algorithm classifies light condition of the input images. We validate the proposed method qualitatively and quantitatively with 1,745 images containing red and blue traffic signs captured with four light conditions; sunny, cloudy, rainy and night. The proposed method achieves the high detection rate of 99.25% in sunny, 98.33% in cloudy, 87.85% in rainy and 88.70% at night.

키워드

Cluster Center TreeClusteringColor SegmentationReference GamutTraffic SignTraffic Sign DetectionColorImage segmentationInformation managementCluster centersClusteringColor segmentationReference GamutTraffic sign detectionTraffic signs
제목
Illumination invariant color segmentation method based on cluster center tree for traffic sign detection
저자
Woo, ByeongdaeChoi, YeongwooUh, YoungjungLim, KwangyongByun, Hyeran
DOI
10.1145/2701126.2701139
발행일
2015-01
유형
Conference Paper
저널명
ACM IMCOM 2015 - Proceedings