Skip to main content

Toolset for Vision Agent

Project description

vision_agent

🔍🤖 Vision Agent

ci_status PyPI version version

Vision Agent is a library that helps you utilize agent frameworks for your vision tasks. Many current vision problems can easily take hours or days to solve, you need to find the right model, figure out how to use it, possibly write programming logic around it to accomplish the task you want or even more expensive, train your own model. Vision Agent aims to provide an in-seconds experience by allowing users to describe their problem in text and utilizing agent frameworks to solve the task for them. Check out our discord for updates and roadmaps!

Documentation

Getting Started

Installation

To get started, you can install the library using pip:

pip install vision-agent

Ensure you have an OpenAI API key and set it as an environment variable (if you are using Azure OpenAI please see the Azure setup section):

export OPENAI_API_KEY="your-api-key"

Vision Agents

You can interact with the agents as you would with any LLM or LMM model:

>>> from vision_agent.agent import VisionAgent
>>> agent = VisionAgent()
>>> agent("What percentage of the area of this jar is filled with coffee beans?", image="jar.jpg")
"The percentage of area of the jar filled with coffee beans is 25%."

To better understand how the model came up with it's answer, you can also run it in debug mode by passing in the verbose argument:

>>> agent = VisionAgent(verbose=True)

You can also have it return the workflow it used to complete the task along with all the individual steps and tools to get the answer:

>>> resp, workflow = agent.chat_with_workflow([{"role": "user", "content": "What percentage of the area of this jar is filled with coffee beans?"}], image="jar.jpg")
>>> print(workflow)
[{"task": "Segment the jar using 'grounding_sam_'.",
  "tool": "grounding_sam_",
  "parameters": {"prompt": "jar", "image": "jar.jpg"},
  "call_results": [[
    {
      "labels": ["jar"],
      "scores": [0.99],
      "bboxes": [
        [0.58, 0.2, 0.72, 0.45],
      ],
      "masks": "mask.png"
    }
  ]],
  "answer": "The jar is located at [0.58, 0.2, 0.72, 0.45].",
},
{"visualize_output": "final_output.png"}]

You can also provide reference data for the model to utilize. For example, if you want to utilize VisualPromptCounting:

agent(
    "How many apples are in this image?",
    image="apples.jpg",
    reference_data={"bbox": [0.1, 0.11, 0.24, 0.25]},
)

Where [0.1, 0.11, 0.24, 0.25] is the normalized bounding box coordinates of an apple. Similarly for DINOv you can provide a reference image and mask:

agent(
    "Can you detect all of the objects similar to the mask I've provided?",
    image="image.jpg",
    reference_data={"mask": "reference_mask.png", "image": "reference_image.png"},
)

Here, reference_mask.png and reference_image.png in reference_data could be any image with it's corresponding mask that is the object you want to detect in image.jpg. You can find a demo app to generate masks for DINOv here.

Tools

There are a variety of tools for the model or the user to use. Some are executed locally while others are hosted for you. You can also ask an LLM directly to build a tool for you. For example:

>>> import vision_agent as va
>>> llm = va.llm.OpenAILLM()
>>> detector = llm.generate_detector("Can you build a jar detector for me?")
>>> detector("jar.jpg")
[{"labels": ["jar",],
  "scores": [0.99],
  "bboxes": [
    [0.58, 0.2, 0.72, 0.45],
  ]
}]

Custom Tools

You can also add your own custom tools for your vision agent to use:

from vision_agent.tools import Tool, register_tool
@register_tool
class NumItems(Tool):
   name = "num_items_"
   description = "Returns the number of items in a list."
   usage = {
       "required_parameters": [{"name": "prompt", "type": "list"}],
       "examples": [
           {
               "scenario": "How many items are in this list? ['a', 'b', 'c']",
               "parameters": {"prompt": "['a', 'b', 'c']"},
           }
       ],
   }
   def __call__(self, prompt: list[str]) -> int:
       return len(prompt)

This will register it with the list of tools Vision Agent has access to. It will be able to pick it based on the tool description and use it based on the usage provided. You can find an example that creates a custom tool for template matching here.

Tool List

Tool Description
CLIP CLIP is a tool that can classify or tag any image given a set of input classes or tags.
ImageCaption ImageCaption is a tool that can generate a caption for an image.
GroundingDINO GroundingDINO is a tool that can detect arbitrary objects with inputs such as category names or referring expressions.
GroundingSAM GroundingSAM is a tool that can detect and segment arbitrary objects with inputs such as category names or referring expressions.
DINOv DINOv is a tool that can detect arbitrary objects with using a referring mask.
Crop Crop crops an image given a bounding box and returns a file name of the cropped image.
BboxArea BboxArea returns the area of the bounding box in pixels normalized to 2 decimal places.
SegArea SegArea returns the area of the segmentation mask in pixels normalized to 2 decimal places.
BboxIoU BboxIoU returns the intersection over union of two bounding boxes normalized to 2 decimal places.
SegIoU SegIoU returns the intersection over union of two segmentation masks normalized to 2 decimal places.
BoxDistance BoxDistance returns the minimum distance between two bounding boxes normalized to 2 decimal places.
MaskDistance MaskDistance returns the minimum distance between two segmentation masks in pixel units
BboxContains BboxContains returns the intersection of two boxes over the target box area. It is good for check if one box is contained within another box.
ExtractFrames ExtractFrames extracts frames with motion from a video.
ZeroShotCounting ZeroShotCounting returns the total number of objects belonging to a single class in a given image.
VisualPromptCounting VisualPromptCounting returns the total number of objects belonging to a single class given an image and visual prompt.
VisualQuestionAnswering VisualQuestionAnswering is a tool that can explain the contents of an image and answer questions about the image.
ImageQuestionAnswering ImageQuestionAnswering is similar to VisualQuestionAnswering but does not rely on OpenAI and instead uses a dedicated model for the task.
OCR OCR returns the text detected in an image along with the location.

It also has a basic set of calculate tools such as add, subtract, multiply and divide.

Azure Setup

If you want to use Azure OpenAI models, you can set the environment variable:

export AZURE_OPENAI_API_KEY="your-api-key"
export AZURE_OPENAI_ENDPOINT="your-endpoint"

You can then run Vision Agent using the Azure OpenAI models:

>>> import vision_agent as va
>>> agent = va.agent.VisionAgent(
>>>     task_model=va.llm.AzureOpenAILLM(),
>>>     answer_model=va.lmm.AzureOpenAILMM(),
>>>     reflection_model=va.lmm.AzureOpenAILMM(),
>>> )

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

vision_agent-0.2.25.tar.gz (1.0 MB view details)

Uploaded Source

Built Distribution

vision_agent-0.2.25-py3-none-any.whl (1.0 MB view details)

Uploaded Python 3

File details

Details for the file vision_agent-0.2.25.tar.gz.

File metadata

  • Download URL: vision_agent-0.2.25.tar.gz
  • Upload date:
  • Size: 1.0 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.4.2 CPython/3.10.11 Linux/6.5.0-1021-azure

File hashes

Hashes for vision_agent-0.2.25.tar.gz
Algorithm Hash digest
SHA256 acb62e0917ae5edda44ee1dc0499148cc03dc4285df133bc3552f5502807b7f7
MD5 5839b545e84e9778b4880497c98e0690
BLAKE2b-256 106965cbc63e23a1b099d73b3773824ac54d3be978aa66b0d49927c9fe4fc7bb

See more details on using hashes here.

File details

Details for the file vision_agent-0.2.25-py3-none-any.whl.

File metadata

  • Download URL: vision_agent-0.2.25-py3-none-any.whl
  • Upload date:
  • Size: 1.0 MB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.4.2 CPython/3.10.11 Linux/6.5.0-1021-azure

File hashes

Hashes for vision_agent-0.2.25-py3-none-any.whl
Algorithm Hash digest
SHA256 8ba26ed9d2b80fc067822b95e1b81207fe92fbc52218abdd590df2ef703b2008
MD5 1e647a6099699fad6e0b2428b1eb5eaa
BLAKE2b-256 3831cf432c1c361f6c3876fa6170570f508d2b6b7fdbf819f0373ea305b2dc1b

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page