STOIK Noise Autofix History

Version history for STOIK Noise Autofix shows you how often it was updated over the past months (starting May 26, 2006) as well as 'what is new' information for each update (if available, since this information provided by the author).

Version: 1.6
Size: 5640KB
OS: Win 2000/XP
Description:   STOIK Noise Autofix automatically cleans noise in digital photos while preserving image details and sharpness. The noise is reduced by 2 - 3 stops, so that the noise level of the photo shot at ISO 1600 is effectively reduced to ISO 200 - 400 levels.

v 1.6 updated on Apr 26, 2007

Unknown changes

v 1.0.9 updated on May 26, 2006

Unknown changes

Go back to the STOIK Noise Autofix review

More Downloads

  • STOIK Cameraphone Enhancer

    Program automatically improves the quality of photos taken with cameraphones. It uses sophisticated proprietary algorithm to analyze quality of photos and applies different sets of specially designed filters to process different types of photos.

  • STOIK RedEye Autofix

    Program automatically detects and corrects 'red eye' in digital photos. You can even process photos without opening them - simply select one or multiple photos on your computer or camera, right-click and and select 'Fix Red Eye' command.

  • STOIK Smart Resizer

    Program offers various methods to resize digital photos including new STOIK Smart Resize algorithm which allows to enlarge digital images up to 1000% without loss of visual sharpness.

  • PhotoRite Deluxe - Windows photo editor (autofix)

    PhotoRite Deluxe is an easy-to-use and intelligent photo editing software for digital camera amateur. User can easily acquire, view, edit, make effects and share photos. The PhotoRite Auto-Fix function automatically correct poor photos in a click.

  • STOIK PanoramaMaker

    STOIK PanoramaMaker is automatic photo panorama software that turns any group of overlapping photos into high quality panoramic image. The program combines very simple user interface, step by step workflow and powerful modern algorithms