ObjectFinder is a MATLAB app that allows you to recognize a large number of small structures within a three-dimensional image volume.
This app is developed for neuroscience research, with the purpose of detecting fluorescently-labeled synapses in neuronal image stacks acquired using confocal or super-resolution microscopes.
Key features:
- Multi-threaded 3D object connectivity search within large image volumes
- Trainable deep learning classifier for automatic validation of objects
- Visual interaction with objects using the builtin volume inspector
- 3D inspection and interaction of detected objects using Bitplane Imaris
- Automated colocalization analysis
- Automated nearest neighbor analysis
- Integrated plots of detected object's statistics
- Export analysis results to Microsoft Excel®
- Batch processing of multiple images with custom start time
For more information and to download latest ObjectFinder version visit: https://lucadellasantina.github.io/ObjectFinder/
引用格式
Luca Della Santina (2024). ObjectFinder (https://github.com/lucadellasantina/ObjectFinder), GitHub. 检索时间: .
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版本 | 已发布 | 发行说明 | |
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9.1 | New volume inspector. New skeleton management system. Bugfixes |
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8.8 | + Compiled binaries for Windows, macOS, Linux
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8.7 | Batch reporting of object properties |
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8.1 | Improved user interface, bugfixes |
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8.0 | Simplified GUI, Multiple skeleton support, Visual object refinement |
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7.8 | Faster loading times for large objects sets
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7.5.2 | Speed improvements and bugfixes |
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7.4 | Faster loading speed
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7.2 | New Monte Carlo simulations
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7.0 | Import and use custom Neural Network models from ONNX, Keras-Tensorflow or Caffe formats
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6.5 | Batch colocalization results can be saved into a table
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6.4 | Automation improvements: Batch processing of all folders contained within a root path & batch colocalization analysis |
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6.2 | + Overwrite objects if already present
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6.1 | User can choose whether to use local or global noise detection
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6.0 | Improved detection algorithm
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5.18 | Improved Colocalization reports
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5.17 | Integrated object inspector: improved accuracy of object selection and handling of images with non-square image ratio |
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5.16 | User can now visually inspect non-colocalized objects |
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5.14 | Fixed missing update of colocalization lists when a new experiment folder is loaded |
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5.13 | Linear density along skeleton is also reported by depth
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5.11 | Support for 2D images
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5.10 | Support for skeletons created with ImageJ's Simple Neurite Tracer plugin |
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5.9 | + Improved speed when found objects are > 1 million
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5.8 | Improved search accuracy by lowering stepping of intensity values within the volume to the finest value
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5.7 | Improved speed of blocks conflict resolution by ~200X
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5.6 | Improved speed of objects accumulation by 10X
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5.5 | Improved 10 times the speed of search algorithms by code optimization
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5.4 | User can select among different search methods
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5.3 | Simplified resolution of duplicated objects across overlapping regions between blocks
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5.2.1 | Save colocalized objects as a new set of objects
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5.2 | 8 new deep learning models available for automatic objects validation (vgg-16/19, SqueezeNet, GoogleNet, Inception-v3, Resnet-50 / 101, Inception-ResNet-v2) You can filter objects based on their shape properties (roundness and major axis length) |
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5.1 | Improved 5X the speed of objects' validation when using neural network |
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5.0.1 | Minimum requirements update |
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5.0 | - Machine learning classifier using MATLAB's Neural Networks toolbox
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4.10.0.0 | Colocalization analysis
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4.7.0.0 | Linked to GitHub repository |
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4.6.0.0 | Minor bugfix
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4.4.0.0 | Project description update for v4.4
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