Moving Object Detection Through Image Bit-Planes Representation Without Thresholding
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Wei-Yang Lin | Kahlil Muchtar | Chih-Yang Lin | Zhi-Yao Jian | Chih-Yang Lin | K. Muchtar | Wei-Yang Lin | Zhi-Yao Jian
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