Bounding box detection

In this experimental launch, we are providing developers with a powerful tool for object detection and localization within images and video. By accurately identifying and delineating objects with bounding boxes, developers can unlock a wide range of applications and enhance the intelligence of their projects.

Key Benefits:

  • Simple: Integrate object detection capabilities into your applications with ease, regardless of your computer vision expertise.
  • Customizable: Produce bounding boxes based on custom instructions (e.g. "I want to see bounding boxes of all the green objects in this image"), without having to train a custom model.

Technical Details:

  • Input: Your prompt and associated images or video frames.
  • Output: Bounding boxes in the [y_min, x_min, y_max, x_max] format. The top left corner is the origin. The x and y axis go horizontally and vertically, respectively. Coordinate values are normalized to 0-1000 for every image.
  • Visualization: AI Studio users will see bounding boxes plotted within the UI. Vertex AI users should visualize their bounding boxes through custom visualization code.

Python

Install

pip install --upgrade google-genai

To learn more, see the SDK reference documentation.

Set environment variables to use the Gen AI SDK with Vertex AI:

# Replace the `GOOGLE_CLOUD_PROJECT` and `GOOGLE_CLOUD_LOCATION` values
# with appropriate values for your project.
export GOOGLE_CLOUD_PROJECT=GOOGLE_CLOUD_PROJECT
export GOOGLE_CLOUD_LOCATION=global
export GOOGLE_GENAI_USE_VERTEXAI=True

import requests
from google import genai
from google.genai.types import (
    GenerateContentConfig,
    HarmBlockThreshold,
    HarmCategory,
    HttpOptions,
    Part,
    SafetySetting,
)
from PIL import Image, ImageColor, ImageDraw
from pydantic import BaseModel

# Helper class to represent a bounding box
class BoundingBox(BaseModel):
    """
    Represents a bounding box with its 2D coordinates and associated label.

    Attributes:
        box_2d (list[int]): A list of integers representing the 2D coordinates of the bounding box,
                            typically in the format [y_min, x_min, y_max, x_max].
        label (str): A string representing the label or class associated with the object within the bounding box.
    """

    box_2d: list[int]
    label: str

# Helper function to plot bounding boxes on an image
def plot_bounding_boxes(image_uri: str, bounding_boxes: list[BoundingBox]) -> None:
    """
    Plots bounding boxes on an image with labels, using PIL and normalized coordinates.

    Args:
        image_uri: The URI of the image file.
        bounding_boxes: A list of BoundingBox objects. Each box's coordinates are in
                        normalized [y_min, x_min, y_max, x_max] format.
    """
    with Image.open(requests.get(image_uri, stream=True, timeout=10).raw) as im:
        width, height = im.size
        draw = ImageDraw.Draw(im)

        colors = list(ImageColor.colormap.keys())

        for i, bbox in enumerate(bounding_boxes):
            # Scale normalized coordinates to image dimensions
            abs_y_min = int(bbox.box_2d[0] / 1000 * height)
            abs_x_min = int(bbox.box_2d[1] / 1000 * width)
            abs_y_max = int(bbox.box_2d[2] / 1000 * height)
            abs_x_max = int(bbox.box_2d[3] / 1000 * width)

            color = colors[i % len(colors)]

            # Draw the rectangle using the correct (x, y) pairs
            draw.rectangle(
                ((abs_x_min, abs_y_min), (abs_x_max, abs_y_max)),
                outline=color,
                width=4,
            )
            if bbox.label:
                # Position the text at the top-left corner of the box
                draw.text((abs_x_min + 8, abs_y_min + 6), bbox.label, fill=color)

        im.show()

client = genai.Client(http_options=HttpOptions(api_version="v1"))

config = GenerateContentConfig(
    system_instruction="""
    Return bounding boxes as an array with labels.
    Never return masks. Limit to 25 objects.
    If an object is present multiple times, give each object a unique label
    according to its distinct characteristics (colors, size, position, etc..).
    """,
    temperature=0.5,
    safety_settings=[
        SafetySetting(
            category=HarmCategory.HARM_CATEGORY_DANGEROUS_CONTENT,
            threshold=HarmBlockThreshold.BLOCK_ONLY_HIGH,
        ),
    ],
    response_mime_type="application/json",
    response_schema=list[BoundingBox],
)

image_uri = "https://storage.googleapis.com/generativeai-downloads/images/socks.jpg"

response = client.models.generate_content(
    model="gemini-2.5-flash",
    contents=[
        Part.from_uri(
            file_uri=image_uri,
            mime_type="image/jpeg",
        ),
        "Output the positions of the socks with a face. Label according to position in the image.",
    ],
    config=config,
)
print(response.text)
plot_bounding_boxes(image_uri, response.parsed)

# Example response:
# [
#     {"box_2d": [6, 246, 386, 526], "label": "top-left light blue sock with cat face"},
#     {"box_2d": [234, 649, 650, 863], "label": "top-right light blue sock with cat face"},
# ]

Go

Learn how to install or update the Go.

To learn more, see the SDK reference documentation.

Set environment variables to use the Gen AI SDK with Vertex AI:

# Replace the `GOOGLE_CLOUD_PROJECT` and `GOOGLE_CLOUD_LOCATION` values
# with appropriate values for your project.
export GOOGLE_CLOUD_PROJECT=GOOGLE_CLOUD_PROJECT
export GOOGLE_CLOUD_LOCATION=global
export GOOGLE_GENAI_USE_VERTEXAI=True

import (
	"context"
	"encoding/json"
	"fmt"
	"image"
	"image/color"
	"image/draw"
	"image/jpeg"
	"io"
	"net/http"

	"google.golang.org/genai"
)

// BoundingBox represents a bounding box with coordinates and label.
type BoundingBox struct {
	Box2D []int  `json:"box_2d"`
	Label string `json:"label"`
}

// plotBoundingBoxes downloads the image and overlays bounding boxes.
func plotBoundingBoxes(imageURI string, boundingBoxes []BoundingBox) error {
	resp, err := http.Get(imageURI)
	if err != nil {
		return fmt.Errorf("failed to download image: %w", err)
	}
	defer resp.Body.Close()

	img, err := jpeg.Decode(resp.Body)
	if err != nil {
		return fmt.Errorf("failed to decode image: %w", err)
	}

	bounds := img.Bounds()
	rgba := image.NewRGBA(bounds)
	draw.Draw(rgba, bounds, img, bounds.Min, draw.Src)

	// Simple red color for bounding boxes
	red := color.RGBA{255, 0, 0, 255}

	for _, bbox := range boundingBoxes {
		// scale normalized coordinates [01000] to absolute pixels
		yMin := bbox.Box2D[0] * bounds.Dy() / 1000
		xMin := bbox.Box2D[1] * bounds.Dx() / 1000
		yMax := bbox.Box2D[2] * bounds.Dy() / 1000
		xMax := bbox.Box2D[3] * bounds.Dx() / 1000

		// draw rectangle border
		for x := xMin; x <= xMax; x++ {
			rgba.Set(x, yMin, red)
			rgba.Set(x, yMax, red)
		}
		for y := yMin; y <= yMax; y++ {
			rgba.Set(xMin, y, red)
			rgba.Set(xMax, y, red)
		}
	}

	return nil
}

func generateBoundingBoxesWithText(w io.Writer) error {
	ctx := context.Background()

	client, err := genai.NewClient(ctx, &genai.ClientConfig{
		HTTPOptions: genai.HTTPOptions{APIVersion: "v1"},
	})
	if err != nil {
		return fmt.Errorf("failed to create genai client: %w", err)
	}

	imageURI := "https://storage.googleapis.com/generativeai-downloads/images/socks.jpg"

	// Schema definition for []BoundingBox
	schema := &genai.Schema{
		Type: genai.TypeArray,
		Items: &genai.Schema{
			Type: genai.TypeObject,
			Properties: map[string]*genai.Schema{
				"box_2d": {
					Type:  genai.TypeArray,
					Items: &genai.Schema{Type: genai.TypeInteger},
				},
				"label": {Type: genai.TypeString},
			},
			Required: []string{"box_2d", "label"},
		},
	}

	config := &genai.GenerateContentConfig{
		SystemInstruction: &genai.Content{
			Parts: []*genai.Part{{
				Text: "Return bounding boxes as an array with labels. Never return masks. Limit to 25 objects.",
			}},
		},
		Temperature:      float32Ptr(0.5),
		ResponseMIMEType: "application/json",
		ResponseSchema:   schema,
		SafetySettings: []*genai.SafetySetting{
			{
				Category:  genai.HarmCategoryDangerousContent,
				Threshold: genai.HarmBlockThresholdBlockOnlyHigh,
			},
		},
	}

	contents := []*genai.Content{
		{
			Role: "user",
			Parts: []*genai.Part{
				{
					FileData: &genai.FileData{
						FileURI:  imageURI,
						MIMEType: "image/jpeg",
					},
				},
				{Text: "Output the positions of the socks with a face. Label according to position in the image."},
			},
		},
	}

	resp, err := client.Models.GenerateContent(ctx, "gemini-2.5-flash", contents, config)
	if err != nil {
		return fmt.Errorf("failed to generate content: %w", err)
	}

	fmt.Fprintln(w, resp.Text())

	// Parse into []BoundingBox
	var boxes []BoundingBox
	if err := json.Unmarshal([]byte(resp.Text()), &boxes); err != nil {
		return fmt.Errorf("failed to parse bounding boxes: %w", err)
	}

	// Example response:
	//	Box: (962,113)-(2158,1631) Label: top left sock with face
	//	Box: (2656,721)-(3953,2976) Label: top right sock with face
	//...

	return plotBoundingBoxes(imageURI, boxes)
}

func float32Ptr(v float32) *float32 { return &v }