# Image Embedding Pipeline with Resnet50 Authors: Kyle, shiyu22 ## Overview This pipeline is used to **extract the feature vector of the image**, first to normalize the image, and then to use the resnet50 model to generate the vector. In fact, the pipeline runs by parsing [the yaml file](./image_embedding_resnet50.yaml), which declares some functions we call **Operator**, and the **DataFrame** required by each Operator. Next will introduce the interface, how to use it and how it works, have fun with it! ## Interface `towhee.pipeline(task: str, fmc: FileManagerConfig = FileManagerConfig(), branch: str = 'main', force_download: bool = False)` [source](https://github.com/towhee-io/towhee/blob/main/towhee/__init__.py) **param:** - **task**(str), task name or pipeline repo name. - **fmc**(FileManagerConfig), optional file manager config for the local instance, default is FileManagerConfig(). - **branch**(str), which branch to use for operators/pipelines on hub, defaults to 'main'. - **force_download**(bool), whether to redownload pipeline and operators, default is False. **return:** - **_PipelineWrapper**, which is a wrapper class around `Pipeline`. When we declare a pipeline object with a specific task, such as `towhee/image-embedding-resnet50` in this repo, it will run according to the Yaml file, and the input and output are as follows: **inputs:** - **img_tensor**(PIL.Image), image to be embedded. **outputs:** - **cnn**(numpy.ndarray), the embedding of image. ## How to use 1. Install [Towhee](https://github.com/towhee-io/towhee) ```bash $ pip3 install towhee ``` > You can refer to [Getting Started with Towhee](towhee.io) for more details. If you have questions, you can [submit an issue to the towhee repository](https://github.com/towhee-io/towhee/issues). 2. Run it with Towhee ```python >>> from towhee import pipeline >>> from PIL import Image >>> img = Image.open('./test_data/test.jpg') >>> embedding_pipeline = pipeline('towhee/image-embedding-resnet50') >>> embedding = embedding_pipeline(img) ``` ## How it works First of all, you need to learn the pipeline and operator in Towhee architecture: - **Pipeline**: A `Pipeline` is a single machine learning task that is composed of several operators. Operators are connected together internally via a directed acyclic graph. - **Operator**: An `Operator` is a single node within a pipeline. It contains files (e.g. code, configs, models, etc...) and works for reusable operations (e.g., preprocessing an image, inference with a pretrained model). This pipeline includes four functions: `_start_op`, `towhee/transform-image`, `towhee/resnet50-image-embedding` and` _end_op`. It is necessary to ensure that the input and output of the four Operators correspond to each other, and the input and output data types can be defined by DataFrame. ![img](./pic/pipeline.png) Among the four Operator, `_start_op` and `_end_op` are required in any Pipeline, and they are used to start and end the pipeline in the Towhee system. For the other two Operators, please refer to [towhee/transform-image](https://hub.towhee.io/towhee/transform-image) and [towhee/resnet50-image-embedding](https://hub.towhee.io/towhee/resnet50-image-embedding).