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Load TIFF files into matlab fast, with lazy loading

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TIFFStack

Load TIFF files into matlab fast, with lazy loading

This class allows you to access a TIFF file as a matlab tensor, while only reading the data that you need from disk. A TIFFStack object appears like a four-dimensional tensor, with dimensions for rows, columns, frames and channels (multiple samples per pixel). These objects can be passed transparently into other functions that expect matlab tensors. If you need to process only a portion, or only one channel of a TIFF stack, then this class will save you allocating the enormous amounts of memory required to load the entire file. TIFFStack is also much faster than using imread to read each frame of the TIFF file separately.

TIFFStack attempts to use libTiff, which is directly supported in recent Matlab versions. This provides dramatic speed-ups, and is a good deal faster than using imread or the Matlab Tiff class. If libTiff is not available, then Matlab-only code is used to read image data. permute, ipermute, transpose and ctranspose are also transparently supported.

Download and install

Clone TIFFStack into a directory called @TIFFStack. The ampersand symbol (@) is important, since it indicates to Matlab that TIFFStack is an object-oriented module. Add the parent directory — not the @TIFFStack directory — to the Matlab path.

Usage

tsStack = TIFFStack(strFilename <, bInvert>)

A TIFFStack object behaves like a read-only memory mapped TIFF file. The entire image stack is treated as a Matlab tensor. Each frame of the file must have the same dimensions. Reading the image data is optimised to the extent possible; the header information is only read once.

This class attempts to use the Matlab libTiff interface, if available. If not, it uses a modified version of tiffread [1, 2] to read data. Code is included (but disabled) to use the matlab imread function, but this function returns invalid data for some TIFF formats.

Construction of a TIFFStack object

>> tsStack = TIFFStack('test.tiff'); % Construct a TIFF stack associated with a file

>> tsStack = TIFFStack('test.tiff', true); % Indicate that the image data should be inverted 
   tsStack = 
     TIFFStack handle 
     Properties: 
        bInvert: 1 
        strFilename: [1x9 char] 
        sImageInfo: [5x1 struct] 
        strDataClass: 'uint16'

Accessing data

>> tsStack(:, :, 3); % Retrieve the 3rd frame of the stack, all planes 
>> tsStack(:, :, 1, 3); % Retrieve the 3rd plane of the 1st frame 
>> size(tsStack) % Find the size of the stack (rows, cols, frames, planes per pixel)

ans = 
   128 128 5 1

>> tsStack(4); % Linear indexing is supported 
>> tsStack.bInvert = true; % Turn on data inversion

Stacks with interleaved frame, channel and slice dimensions

Some TIFF generation software stores multiple samples per pixel as interleaved frames in a TIFF file. Other complex stacks may include multiple different images per frame of time (e.g. multiple cameras or different imaged locations per frame). TIFFStack allows these files to be de-interleaved, such that each conceptual data dimension has its own referencing dimension within Matlab.

This functionality uses the optional vnInterleavedFrameDims argument. This is a vector of dimensions that were interleaved into the single frame dimension in the stack.

For example, a stack contains 2 channels of data per pixel, and 3 imaged locations per frame, all interleaved into the TIFF frame dimension. The stack contains 10 conceptual frames, and each frame contains 5x5 pixels.

The stack is therefore conceptually of dimensions [5 5 2 3 10 1], but appears on disk with dimensions [5 5 60 1]. (The final dimension corresponds to the samples-per-pixel dimension of the TIFF file).

>> tsStack = TIFFStack('file.tif', [], [2 3 10]);
>> size(tsStack)

ans =
     5    5    2    3   10

Permutation and indexing now works seamlessly on this stack, with each conceptual dimension de-interleaved.

If desired, the final number of frames can be left off vnInterleavedFrameDims; for example

>> tsStack = TIFFStack('file.tif', [], [2 3]);
>> size(tsStack)

ans =
     5    5    2    3   10

Note: You must be careful that you specify the dimensions in the appropriate order, exactly as interleaved in the stack. Also, if the stack contains multiple samples per pixel in native TIFF format, the samples-per-pixel dimension will always be pushed to the final dimension.

Publications

This work was published in Frontiers in Neuroinformatics: DR Muir and BM Kampa. 2015. FocusStack and StimServer: A new open source MATLAB toolchain for visual stimulation and analysis of two-photon calcium neuronal imaging data, Frontiers in Neuroinformatics 8 85. DOI: dx.doi.org/10.3389/fninf.2014.00085. Please cite our publication in lieu of thanks, if you use this code.

References

[1] Francois Nedelec, Thomas Surrey and A.C. Maggs. Physical Review Letters 86: 3192-3195; 2001. DOI: 10.1103/PhysRevLett.86.3192

[2] http://www.cytosim.org

Acknowledgements

This work optionally uses tiffread from Francois Nedelec to access the data in the TIFF file. Matlab includes the ability to read TIFF files in imread, including niceties such as only reading a region of interest from each frame, but imread is incredibly slow and amazingly buggy (as of July 2011). TIFFStack uses tiffread in an optimised fashion, by reading and caching the header information (the image file directories — IFDs). Each frame can then be read directly without re-opening the file and re-reading the IFDs.

License

Creative Commons License
TIFFStack by Dylan Muir is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
Based on a work at http://github.com/DylanMuir/TIFFStack.

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