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#labkit — Public Fediverse posts

Live and recent posts from across the Fediverse tagged #labkit, aggregated by home.social.

  1. Why would one want to run machine learning inference from #java?

    To do so on 3D, 4D, ND datasets, trivially accessible from image processing and visualization libraries such as #ImgLib2, the #BigDataViewer, #LabKit and more, all integral parts of #FijiSc.

    * LabKit: imagej.net/plugins/labkit/

    * BigDataViewer: imagej.net/plugins/bdv/

    * ImgLib2: imagej.net/libs/imglib2/

    * Fiji: fiji.sc

  2. Why would one want to run machine learning inference from #java?

    To do so on 3D, 4D, ND datasets, trivially accessible from image processing and visualization libraries such as #ImgLib2, the #BigDataViewer, #LabKit and more, all integral parts of #FijiSc.

    * LabKit: imagej.net/plugins/labkit/

    * BigDataViewer: imagej.net/plugins/bdv/

    * ImgLib2: imagej.net/libs/imglib2/

    * Fiji: fiji.sc

  3. Why would one want to run machine learning inference from #java?

    To do so on 3D, 4D, ND datasets, trivially accessible from image processing and visualization libraries such as #ImgLib2, the #BigDataViewer, #LabKit and more, all integral parts of #FijiSc.

    * LabKit: imagej.net/plugins/labkit/

    * BigDataViewer: imagej.net/plugins/bdv/

    * ImgLib2: imagej.net/libs/imglib2/

    * Fiji: fiji.sc

  4. Why would one want to run machine learning inference from #java?

    To do so on 3D, 4D, ND datasets, trivially accessible from image processing and visualization libraries such as #ImgLib2, the #BigDataViewer, #LabKit and more, all integral parts of #FijiSc.

    * LabKit: imagej.net/plugins/labkit/

    * BigDataViewer: imagej.net/plugins/bdv/

    * ImgLib2: imagej.net/libs/imglib2/

    * Fiji: fiji.sc

  5. Why would one want to run machine learning inference from #java?

    To do so on 3D, 4D, ND datasets, trivially accessible from image processing and visualization libraries such as #ImgLib2, the #BigDataViewer, #LabKit and more, all integral parts of #FijiSc.

    * LabKit: imagej.net/plugins/labkit/

    * BigDataViewer: imagej.net/plugins/bdv/

    * ImgLib2: imagej.net/libs/imglib2/

    * Fiji: fiji.sc

  6. Now onto #FijiSc: Fiji is a recursive acronym meaning "Fiji is just ImageJ" fji.sc (and the paper nature.com/articles/nmeth.2019 ) –and #ImageJ is a #java open source software for image processing imagej.nih.gov/ij/index.html written by Wayne Rasband from the #NIH Research Branch.

    An analogy: think of ImageJ as the kernel and Fiji as the rest of the operating system.

    #FijiSc brings to #ImageJ:
    (1) a package manager to install and update plugins, and that crucially enables reproducible science by exporting the whole set of plugins and libraries as an executable;
    (2) a Script Editor imagej.net/scripting/script-ed supporting many languages (#python, #groovy #ruby #scala #clojure and more), all with access to a huge collection of #JVM libraries;
    (3) huge amount of libraries such as #ImgLib2, #JFreeChart for plotting, for GUIs, etc.

    There are many, many plugins. A tiny sample:

    Machine learning-based image segmentation:
    - #LabKit imagej.net/plugins/labkit/
    - #WEKA Trainable Segmentation imagej.net/plugins/tws/index

    3D/4D/ND Visualization:
    - 3D/4D Viewer #3DViewer imagej.net/plugins/3d-viewer/i with ray-tracing, orthoslices, volume rendering, and more
    - #BigDataViewer #BDV imagej.net/plugins/bdv/index for interactively navigate N-dimensional image volumes larger than RAM

    Image registration and serial section alignment:
    - #BigStitcher for registering 3D/4D tiled datasets, with multiview deconvolution and more imagej.net/plugins/bigstitcher
    - #TrakEM2 for montaging in 2D and alinging in 3D collections of serial sections, typically from #vEM (volume electron microscopy) syn.mrc-lmb.cam.ac.uk/acardona
    - #mpicbg libraries for extracting #SIFT and #MOPS features, then finding feature correspondences and estimating rigid and elastic transformation models nature.com/articles/nmeth.2072

    Summarizing #FijiSc is impossible. See the online forum where questions find answers by the hand of the broader community of users and developers forum.image.sc/

  7. Now onto #FijiSc: Fiji is a recursive acronym meaning "Fiji is just ImageJ" fji.sc (and the paper nature.com/articles/nmeth.2019 ) –and #ImageJ is a #java open source software for image processing imagej.nih.gov/ij/index.html written by Wayne Rasband from the #NIH Research Branch.

    An analogy: think of ImageJ as the kernel and Fiji as the rest of the operating system.

    #FijiSc brings to #ImageJ:
    (1) a package manager to install and update plugins, and that crucially enables reproducible science by exporting the whole set of plugins and libraries as an executable;
    (2) a Script Editor imagej.net/scripting/script-ed supporting many languages (#python, #groovy #ruby #scala #clojure and more), all with access to a huge collection of #JVM libraries;
    (3) huge amount of libraries such as #ImgLib2, #JFreeChart for plotting, for GUIs, etc.

    There are many, many plugins. A tiny sample:

    Machine learning-based image segmentation:
    - #LabKit imagej.net/plugins/labkit/
    - #WEKA Trainable Segmentation imagej.net/plugins/tws/index

    3D/4D/ND Visualization:
    - 3D/4D Viewer #3DViewer imagej.net/plugins/3d-viewer/i with ray-tracing, orthoslices, volume rendering, and more
    - #BigDataViewer #BDV imagej.net/plugins/bdv/index for interactively navigate N-dimensional image volumes larger than RAM

    Image registration and serial section alignment:
    - #BigStitcher for registering 3D/4D tiled datasets, with multiview deconvolution and more imagej.net/plugins/bigstitcher
    - #TrakEM2 for montaging in 2D and alinging in 3D collections of serial sections, typically from #vEM (volume electron microscopy) syn.mrc-lmb.cam.ac.uk/acardona
    - #mpicbg libraries for extracting #SIFT and #MOPS features, then finding feature correspondences and estimating rigid and elastic transformation models nature.com/articles/nmeth.2072

    Summarizing #FijiSc is impossible. See the online forum where questions find answers by the hand of the broader community of users and developers forum.image.sc/

  8. Now onto #FijiSc: Fiji is a recursive acronym meaning "Fiji is just ImageJ" fji.sc (and the paper nature.com/articles/nmeth.2019 ) –and #ImageJ is a #java open source software for image processing imagej.nih.gov/ij/index.html written by Wayne Rasband from the #NIH Research Branch.

    An analogy: think of ImageJ as the kernel and Fiji as the rest of the operating system.

    #FijiSc brings to #ImageJ:
    (1) a package manager to install and update plugins, and that crucially enables reproducible science by exporting the whole set of plugins and libraries as an executable;
    (2) a Script Editor imagej.net/scripting/script-ed supporting many languages (#python, #groovy #ruby #scala #clojure and more), all with access to a huge collection of #JVM libraries;
    (3) huge amount of libraries such as #ImgLib2, #JFreeChart for plotting, for GUIs, etc.

    There are many, many plugins. A tiny sample:

    Machine learning-based image segmentation:
    - #LabKit imagej.net/plugins/labkit/
    - #WEKA Trainable Segmentation imagej.net/plugins/tws/index

    3D/4D/ND Visualization:
    - 3D/4D Viewer #3DViewer imagej.net/plugins/3d-viewer/i with ray-tracing, orthoslices, volume rendering, and more
    - #BigDataViewer #BDV imagej.net/plugins/bdv/index for interactively navigate N-dimensional image volumes larger than RAM

    Image registration and serial section alignment:
    - #BigStitcher for registering 3D/4D tiled datasets, with multiview deconvolution and more imagej.net/plugins/bigstitcher
    - #TrakEM2 for montaging in 2D and alinging in 3D collections of serial sections, typically from #vEM (volume electron microscopy) syn.mrc-lmb.cam.ac.uk/acardona
    - #mpicbg libraries for extracting #SIFT and #MOPS features, then finding feature correspondences and estimating rigid and elastic transformation models nature.com/articles/nmeth.2072

    Summarizing #FijiSc is impossible. See the online forum where questions find answers by the hand of the broader community of users and developers forum.image.sc/

  9. Now onto #FijiSc: Fiji is a recursive acronym meaning "Fiji is just ImageJ" fji.sc (and the paper nature.com/articles/nmeth.2019 ) –and #ImageJ is a #java open source software for image processing imagej.nih.gov/ij/index.html written by Wayne Rasband from the #NIH Research Branch.

    An analogy: think of ImageJ as the kernel and Fiji as the rest of the operating system.

    #FijiSc brings to #ImageJ:
    (1) a package manager to install and update plugins, and that crucially enables reproducible science by exporting the whole set of plugins and libraries as an executable;
    (2) a Script Editor imagej.net/scripting/script-ed supporting many languages (#python, #groovy #ruby #scala #clojure and more), all with access to a huge collection of #JVM libraries;
    (3) huge amount of libraries such as #ImgLib2, #JFreeChart for plotting, for GUIs, etc.

    There are many, many plugins. A tiny sample:

    Machine learning-based image segmentation:
    - #LabKit imagej.net/plugins/labkit/
    - #WEKA Trainable Segmentation imagej.net/plugins/tws/index

    3D/4D/ND Visualization:
    - 3D/4D Viewer #3DViewer imagej.net/plugins/3d-viewer/i with ray-tracing, orthoslices, volume rendering, and more
    - #BigDataViewer #BDV imagej.net/plugins/bdv/index for interactively navigate N-dimensional image volumes larger than RAM

    Image registration and serial section alignment:
    - #BigStitcher for registering 3D/4D tiled datasets, with multiview deconvolution and more imagej.net/plugins/bigstitcher
    - #TrakEM2 for montaging in 2D and alinging in 3D collections of serial sections, typically from #vEM (volume electron microscopy) syn.mrc-lmb.cam.ac.uk/acardona
    - #mpicbg libraries for extracting #SIFT and #MOPS features, then finding feature correspondences and estimating rigid and elastic transformation models nature.com/articles/nmeth.2072

    Summarizing #FijiSc is impossible. See the online forum where questions find answers by the hand of the broader community of users and developers forum.image.sc/