# Unity Perception Package (com.unity.perception) The Perception package provides a toolkit for generating large-scale datasets for perception-based machine learning, training and validation. It is focused on capturing ground truth for Camera-based use cases. In the future, the Perception package will include other types of sensors and machine learning tasks. Visit the pages below for in-depth documentation on inidividual components of the package. |Feature|Description| |---|---| |[Labeling](GroundTruthLabeling.md)|A component that marks a GameObject and its descendants with a set of labels| |[LabelConfig](GroundTruthLabeling.md#label-config)|An asset that defines a taxonomy of labels for ground truth generation| |[Perception Camera](PerceptionCamera.md)|Captures RGB images and ground truth from a [Camera](https://docs.unity3d.com/Manual/class-Camera.html).| |[DatasetCapture](DatasetCapture.md)|Ensures sensors are triggered at proper rates and accepts data for the JSON dataset.| |[Randomization (Experimental)](Randomization/Index.md)|The Randomization tool set lets you integrate domain randomization principles into your simulation.| ## Getting Started **[Quick Installation Instructions](com.unity.perception/Documentation~/SetupSteps.md)** Get your local Perception workspace up and running quickly. Recommended for users with prior Unity experience. **[Perception Tutorial](com.unity.perception/Documentation~/Tutorial/TUTORIAL.md)** Detailed instructions covering all the important steps from installing Unity Editor, to creating your first Perception project, building a randomized Scene, and generating large-scale synthetic datasets by leveraging the power of Unity Simulation. No prior Unity experience required. ## Preview package This package is available as a preview, so it is not ready for production use. The features and documentation in this package might change before it is verified for release. ## Example projects using Perception ### SynthDet [SynthDet](https://github.com/Unity-Technologies/SynthDet) is an end-to-end solution for training a 2D object detection model using synthetic data. ### Unity Simulation Smart Camera example The [Unity Simulation Smart Camera Example](https://github.com/Unity-Technologies/Unity-Simulation-Smart-Camera-Outdoor) illustrates how Perception could be used in a smart city or autonomous vehicle simulation. You can generate datasets locally or at scale in [Unity Simulation](https://unity.com/products/unity-simulation). ## Known issues * The Linux Editor 2019.4.7f1 and 2019.4.8f1 might hang when importing HDRP-based Perception projects. For Linux Editor support, use 2019.4.6f1 or 2020.1