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What is noise?
Noise is the digital equivalent of film grain. It can
even look like grain, though more often it looks more like ugly speckles
or color artifacts. It results from a variety of sources, including sampling
errors in pixels, temperature-induced "dark current" in sensor
elements, and signal amplification circuits.
Just as high-speed film yields more grain than low-speed
film, digital photos taken at high ISO settings show much more noise than
photos taken at low ISO settings. Nearly all compact digital cameras show
obvious noise at ISO 400 or above. Even top-of-the-line digital SLRs are
susceptible to noise, particularly at high ISO settings.
Film scanners are also well known for introducing noise
into digitized images, especially in dark areas of slides and in the blue
channel.
Noise is an inherent property of digital imaging sensors.
The laws of physics make it impossible to completely eliminate noise,
and they force a tradeoff between noise levels and other properties like
sensor size or sensitivity. Photons, for instance, arrive at random intervals,
so the simple task of counting them during an exposure-- which is the
basic function of a pixel in a sensor -- is subject to sampling error.
When the exposure is shortened or the pixel size is reduced, there are
fewer photons to "average out" the sampling error, so the noise
increases relative to the signal.
The small sensors in compact digital cameras are more
prone to noise than the large sensors used for digital SLRs. Compact digicams
often have as many pixels as their DSLR brethren, but those pixels are
packed into one quarter the space -- or even less. So, for any given exposure,
many fewer photons reach each pixel in the smaller sensor than in the
larger one, and this leads to correspondingly higher noise. So, the noise
in a compact camera at ISO 200 might be the same as the noise in a DSLR
at ISO 800. By the same reasoning, an 8-megapixel camera might have much
higher noise levels than a 4-megapixel camera if both have the same sensor
size.
The problem with noise
Many common photography situations (for instance, fast-action
sports, indoor, and low-light outdoor photography) can require high ISO
settings to avoid motion blur or handshake. Without the ability to control
noise, the photographer is faced with a choice between two bad alternatives:
Use a low ISO and get a blurry photo, or use a high ISO and get a noisy
image.
In addition, photographers who make large prints often
notice noise in smooth areas even for images taken at low ISO settings.
While this isn't a problem for someone who only makes 4"x6"
prints, it is an issue for the professional who must frequently create
poster-size enlargements from today's partial-frame DSLRs.
In both situations, noise removal is desirable to increase
the visual quality of the image. Unfortunately, digital camera noise is
very difficult to remove using conventional image editing software:
- Camera noise is spread across the frequency spectrum.
It includes "fine-grained" components as well as "coarse"
components.
- Noise varies with color and brightness, and it is
different for every camera and scanner. For instance, blue-channel noise
is often higher than in other channels, and shadow noise is usually
higher than in bright areas.
Most commercially available noise removal tools fail
along one or both of these dimensions. Typically, they are based on ad-hoc
methods like adaptive median filtering, thresholding, or photo-editor
macros, so they are inherently restricted to a limited frequency range,
and they generally assume that noise is uniform throughout the image,
or they rely on a limited set of parameters for each image. So, they tend
to work well on certain images that "fit" their methods well.
However, they are not robust, and they tend to yield poor results when
presented with a variety of images.
The solution: Noise Ninja
PictureCode's Noise Ninja software uses sophisticated
new technology to remove noise from digital images while preserving detail
and sharpness. It combines knowledge of the noise characteristics of a
particular camera or scanner with powerful mathematical and statistical
techniques, to separate noise from the underlying image at several frequencies.
This allows noise to be suppressed without substantially degrading the
image. It is easy to use, fast, and remarkably effective compared to other
approaches. Click here for more information
about Noise Ninja, and here for before-and-after
examples.
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