Analysis to Defog The Foggy Images

نویسندگان

  • Priyanka Soni
  • Amit Garg
چکیده

In human lives images have an important role. To analyze traffic, satellite images are used, in developed cities traffic analysis is done through CCTV cameras. Images captured under bad weather conditions suffer low contrast so their quality degrades with the changes in atmosphere. The main reason behind the image degradation is atmospheric scattering, which is light received from scene points while capturing an image, is absorbed and scattered by a complex medium which includes fog, mist and haze. To carry out meaningful scene analysis, extract useful information or to detect image features it is imperative to remove effects of bad weather from these images. The Open CV tool is used to analyze the noise over the foggy images with numpy interface and python programming language. Author also posses one of most superior simulation tools as MATLAB to process the investigation.

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تاریخ انتشار 2015