Abstract:For decades, photographs have been used to document space-time events and they have often served as evidence in courts. Today, powerful digital image editing software makes image modifications straightforward. This undermines our trust in photographs and, in particular, questions pictures as evidence for real-world events. Contrast enhancement is mainly to adjust the brightness globally. Users may also perform local contrast enhancement for creating a realistic composite image. Most latest technology in the literature uses two algorithms to find the contrast enhancement for the manipulation of digital imagees. First algorithm focus on the detection of global contrast enhancement applied to previously JPEG compressed images.
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