Vision Detector vs ML Annotator Utilisation & Stats

Vision Detector performs image processing using a CoreML model on iPhones and iPads. Typically, CoreML models must be previewed in Xcode, or an app must be built with Xcode to run on an iPhone. However, Vision Detector allows you to easily run CoreML models on your iPhone. To use the app, first prepare a machine learning model in CoreML format using CreateML or coreml tools. Then, copy this model into the iPhone/iPad file system, which is accessible through the iPhone's 'Files' app. This includes local storage and various cloud services (iCloud Drive, One Drive, Google Drive, Dropbox, etc.). You can also use AirDrop to store the CoreML model in the 'Files' app. After launching the app, select and load your machine learning model. You can choose the input source image from: - Video captured by the iPhone/iPad's built-in camera - Still images from the built-in camera - The photo library - The file system For video inputs, continuous inference is performed on the camera feed. However, the frame rate and other parameters depend on the device. The supported types of machine learning models include: - Image classification - Object detection - Style transfer Models lacking a non-maximum suppression layer, or those that use MultiArray for input/output data, are not supported. In the local 'Vision Detector' documents folder, you'll find an empty tab-separated values (TSV) file named 'customMessage.tsv'. This file is for defining custom messages to be displayed. The data should be organized into a table with two columns as follows: (Label output by YOLO, etc.) (tab) (Message) (return) (Label output by YOLO, etc.) (tab) (Message) (return) Note: This application does not include a machine learning model. On the iPhone, you can use the LED torch feature. When the screen is in landscape orientation, touching the screen will hide the UI and switch to full-screen mode.
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ML Annotator allows you to annotate images for use in image segmentation, object detection, video classification and image classification machine learning classifiers. We have many features that make ML Annotator the best way to supercharge your machine learning workflow. - Invite others to your organization so you can annotate the images as a team - Full Apple Pencil support to make annotating super fast if you have an iPad - Download training data in various formats so that you can plug them into your machine learning workflow - Download a custom generate iPython Notebook to provide you with a starting point of how to create a model from your training data - Get suggestions from the app about things that might improve your trainging data
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Comparaison des classements Vision Detector vs. ML Annotator

Comparez l'évolution du classement de Vision Detector au cours des 28 derniers jours à celle de ML Annotator.

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Vision Detector VS.
ML Annotator

14écembre d, 2024