ABSTRACT
Images today have become very large in size; standard cameras have a quality of at least 8 megapixels, meaning each picture has 8 million pixels. Pictures used in the medical field and in architecture and engineering have to be even more detailed since these images contain very important information. These pictures can take up immense amounts of space and can be very time consuming to transfer. An easy way to make the file smaller is to use data compression software that is both near-lossless and can provide a compression algorithm that can rival that of conventional compression algorithms like PNG and BMP. This will be done by compressing the picture based on its characteristic color. The resulting compression allowed for the files to be stored in a file format .CIP that is smaller than the original format. Upon decompression analysis and testing showed that the image integrity was still within the acceptable boundary of image distortion for lossless images.
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