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      Deep learning‐based automatic inpainting for material microscopic images

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          U-Net: Convolutional Networks for Biomedical Image Segmentation

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            Image Quality Assessment: From Error Visibility to Structural Similarity

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              Is Open Access

              ImageJ2: ImageJ for the next generation of scientific image data

              Background ImageJ is an image analysis program extensively used in the biological sciences and beyond. Due to its ease of use, recordable macro language, and extensible plug-in architecture, ImageJ enjoys contributions from non-programmers, amateur programmers, and professional developers alike. Enabling such a diversity of contributors has resulted in a large community that spans the biological and physical sciences. However, a rapidly growing user base, diverging plugin suites, and technical limitations have revealed a clear need for a concerted software engineering effort to support emerging imaging paradigms, to ensure the software’s ability to handle the requirements of modern science. Results We rewrote the entire ImageJ codebase, engineering a redesigned plugin mechanism intended to facilitate extensibility at every level, with the goal of creating a more powerful tool that continues to serve the existing community while addressing a wider range of scientific requirements. This next-generation ImageJ, called “ImageJ2” in places where the distinction matters, provides a host of new functionality. It separates concerns, fully decoupling the data model from the user interface. It emphasizes integration with external applications to maximize interoperability. Its robust new plugin framework allows everything from image formats, to scripting languages, to visualization to be extended by the community. The redesigned data model supports arbitrarily large, N-dimensional datasets, which are increasingly common in modern image acquisition. Despite the scope of these changes, backwards compatibility is maintained such that this new functionality can be seamlessly integrated with the classic ImageJ interface, allowing users and developers to migrate to these new methods at their own pace. Conclusions Scientific imaging benefits from open-source programs that advance new method development and deployment to a diverse audience. ImageJ has continuously evolved with this idea in mind; however, new and emerging scientific requirements have posed corresponding challenges for ImageJ’s development. The described improvements provide a framework engineered for flexibility, intended to support these requirements as well as accommodate future needs. Future efforts will focus on implementing new algorithms in this framework and expanding collaborations with other popular scientific software suites. Electronic supplementary material The online version of this article (doi:10.1186/s12859-017-1934-z) contains supplementary material, which is available to authorized users.
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                Author and article information

                Contributors
                Journal
                Journal of Microscopy
                Journal of Microscopy
                Wiley
                0022-2720
                1365-2818
                March 2021
                September 28 2020
                March 2021
                : 281
                : 3
                : 177-189
                Affiliations
                [1 ]Beijing Advanced Innovation Center for Materials Genome Engineering University of Science and Technology Beijing Beijing China
                [2 ]Beijing Key Laboratory of Knowledge Engineering for Materials Science University of Science and Technology Beijing Beijing China
                [3 ]Institute of Artificial Intelligence, School of Computer and Communication Engineering University of Science and Technology Beijing Beijing China
                [4 ]Taiyuan Shanhu Technology Co., Ltd Shanxi China
                [5 ]Institute for Advanced Materials and Technology University of Science and Technology Beijing Beijing China
                Article
                10.1111/jmi.12960
                32901937
                f3829f95-d870-4c02-a859-f87756f6954c
                © 2021

                http://onlinelibrary.wiley.com/termsAndConditions#vor

                http://doi.wiley.com/10.1002/tdm_license_1.1

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