What is the best image downscaling algorithm (quality-wise)?

There is Lanczos sampling which is slower than bicubic, but produces higher quality images.


Unfortunately, I cannot find a link to the original survey, but as Hollywood cinematographers moved from film to digital images, this question came up a lot, so someone (maybe SMPTE, maybe the ASC) gathered a bunch of professional cinematographers and showed them footage that had been rescaled using a bunch of different algorithms. The results were that for these pros looking at huge motion pictures, the consensus was that Mitchell (also known as a high-quality Catmull-Rom) is the best for scaling up and sinc is the best for scaling down. But sinc is a theoretical filter that goes off to infinity and thus cannot be completely implemented, so I don't know what they actually meant by 'sinc'. It probably refers to a truncated version of sinc. Lanczos is one of several practical variants of sinc that tries to improve on just truncating it and is probably the best default choice for scaling down still images. But as usual, it depends on the image and what you want: shrinking a line drawing to preserve lines is, for example, a case where you might prefer an emphasis on preserving edges that would be unwelcome when shrinking a photo of flowers.

There is a good example of the results of various algorithms at Cambridge in Color.

The folks at fxguide put together a lot of information on scaling algorithms (along with a lot of other stuff about compositing and other image processing) which is worth taking a look at. They also include test images that may be useful in doing your own tests.

Now ImageMagick has an extensive guide on resampling filters if you really want to get into it.

It is kind of ironic that there is more controversy about scaling down an image, which is theoretically something that can be done perfectly since you are only throwing away information, than there is about scaling up, where you are trying to add information that doesn't exist. But start with Lanczos.


I saw an article on Slashdot about Seam Carving a while ago, it might be worth looking into.

Seam carving is an image resizing algorithm developed by Shai Avidan and Ariel Shamir. This algorithm alters the dimensions of an image not by scaling or cropping, but rather by intelligently removing pixels from (or adding pixels to) the image that carry little importance.


(Bi-)linear and (bi-)cubic resampling are not just ugly but horribly incorrect when downscaling by a factor smaller than 1/2. They will result in very bad aliasing akin to what you'd get if you downscampled by a factor of 1/2 then used nearest-neighbor downsampling.

Personally I would recommend (area-)averaging samples for most downsampling tasks. It's very simple and fast and near-optimal. Gaussian resampling (with radius chosen proportional to the reciprocal of the factor, e.g. radius 5 for downsampling by 1/5) may give better results with a bit more computational overhead, and it's more mathematically sound.

One possible reason to use gaussian resampling is that, unlike most other algorithms, it works correctly (does not introduce artifacts/aliasing) for both upsampling and downsampling, as long as you choose a radius appropriate to the resampling factor. Otherwise to support both directions you need two separate algorithms - area averaging for downsampling (which would degrade to nearest-neighbor for upsampling), and something like (bi-)cubic for upsampling (which would degrade to nearest-neighbor for downsampling). One way of seeing this nice property of gaussian resampling mathematically is that gaussian with very large radius approximates area-averaging, and gaussian with very small radius approximates (bi-)linear interpolation.