Compartir un Agent Skill para recortar y normalizar imágenes de producto de e-commerce

Presenta el Agent Skill product-cutout-normalize, su uso, forma de ejecución y parámetros, y conserva el código fuente completo de SKILL.md y scripts/run_pipeline.py.

product-cutout-normalize es un Agent Skill para imágenes de producto.

Procesa imágenes originales y las convierte en imágenes cuadradas con fondo transparente y especificaciones uniformes. Sus reglas predeterminadas son:

  • Lienzo 1024x1024
  • Fondo transparente
  • Conservar el sujeto lo más completo posible
  • Convertir automáticamente sujetos verticales a orientación horizontal
  • Centrar el sujeto
  • Normalizar el ancho visible del sujeto a 820px

Es adecuado para materiales de e-commerce, bibliotecas de producto y preprocesamiento de imágenes para páginas de detalle.

Qué problema resuelve este skill

Después de un recorte básico, muchas imágenes de producto todavía tienen estos problemas:

  • Restos de borde blanco o fondo gris claro
  • Orientación horizontal/vertical del sujeto inconsistente
  • Tamaño de lienzo inconsistente
  • Tamaño del sujeto muy variable
  • Pequeños puntos de ruido en áreas transparentes

Este skill procesa con un flujo fijo:

  1. Recorte con Gemini
  2. Limpieza de fondo claro en los bordes
  3. Eliminación de pequeños fragmentos de ruido
  4. Rotación de imágenes verticales a horizontales
  5. Escalado según ancho objetivo
  6. Colocación en el centro de un lienzo transparente uniforme

Las imágenes exportadas quedan más ordenadas y son más adecuadas para uso por lotes.

Escenarios adecuados

Encaja con estas necesidades:

  • Procesar fotos de producto por lotes
  • Exportar PNG con fondo transparente de forma uniforme
  • Unificar el tamaño visual principal
  • Necesitar un flujo estable y repetible

Si solo procesas pocas imágenes, o si cada imagen necesita ajustar manualmente la composición, quizá no sea la herramienta más adecuada.

Inicio rápido

La forma más directa de ejecución:

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& ".\.venv\Scripts\python.exe" ".codex\skills\product-cutout-normalize\scripts\run_pipeline.py" "input_dir" "output_dir" --overwrite

Antes de ejecutar necesitas:

  • GEMINI_API_KEY
  • google-genai
  • Pillow

Instalar dependencias:

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.\.venv\Scripts\python.exe -m pip install google-genai pillow

Configurar variable de entorno:

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$env:GEMINI_API_KEY="your_api_key"

Reglas de salida

Salida predeterminada:

  • PNG con fondo transparente
  • Lienzo 1024x1024
  • Ancho del sujeto 820px
  • Sujeto centrado
  • Se limpian pequeños puntos de ruido

Así que no es solo un script de quitar fondo, sino más bien un script de organización de imágenes de producto.

Parámetros principales

Parámetros habituales:

  • --model Predeterminado: gemini-2.5-flash-image
  • --canvas-size Tamaño del lienzo cuadrado de salida, predeterminado 1024
  • --target-width Ancho visible del sujeto, predeterminado 820
  • --min-component-pixels Fragmentos transparentes con menos píxeles que este valor se eliminan, predeterminado 500
  • --overwrite Sobrescribe directamente si el archivo de salida ya existe

Por ejemplo:

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& ".\.venv\Scripts\python.exe" ".codex\skills\product-cutout-normalize\scripts\run_pipeline.py" ".\input" ".\output" --canvas-size 1280 --target-width 960 --overwrite

Flujo de procesamiento

El flujo es simple:

  1. Recorte con Gemini
  2. Limpieza de fondo claro en los bordes
  3. Eliminación de pequeños fragmentos de ruido
  4. Rotación de imágenes verticales a horizontales
  5. Escalado según ancho objetivo
  6. Colocación en el centro de un lienzo transparente uniforme

Diferencia frente a scripts comunes de recorte

Comparado con un script común de eliminación de fondo, también trata:

  • Orientación uniforme del sujeto
  • Tamaño uniforme del sujeto
  • Tamaño uniforme del lienzo
  • Limpieza de pequeños fragmentos de ruido
  • Resultados más adecuados para colocarse directamente en una biblioteca de materiales

Código fuente de SKILL.md

Abajo se conserva el código fuente completo de SKILL.md, sin cambios:

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---
name: product-cutout-normalize
description: Run a reusable Gemini product-image pipeline that removes backgrounds, preserves the full subject, rotates tall products to a horizontal orientation, centers them on a 1024x1024 transparent canvas, and normalizes the visible subject width to 820px. Use when the user wants a repeatable cutout-and-normalize workflow for product photos or asks to batch-process product images into standardized square PNG assets.
---

# Product Cutout Normalize

Use this skill when product photos need the same deterministic finishing pipeline:

- Gemini cutout from the original photo
- border cleanup to transparent
- preserve the full subject
- rotate to horizontal when the subject is taller than it is wide
- center on a `1024x1024` transparent canvas
- normalize the visible subject width to `820px`

## Quick Start

Run the bundled script:

```powershell
& ".\.venv\Scripts\python.exe" ".codex\skills\product-cutout-normalize\scripts\run_pipeline.py" "input_dir" "output_dir" --overwrite
```

Required environment:

- `GEMINI_API_KEY`
- `google-genai`
- `Pillow`

## Workflow

1. Confirm the request matches this standard pipeline. If the user asks for a different canvas size, subject width, or layout rule, pass explicit flags instead of changing the script.
2. Run the bundled script on the input directory.
3. If a result looks misaligned, inspect the alpha bounding box and small detached artifacts first; this pipeline already removes tiny alpha components by default.
4. Report the exact input and output directories used, plus any non-default flags.

## Script

Primary entry point:

- `scripts/run_pipeline.py`

Key flags:

- `--model`: Gemini image model, default `gemini-2.5-flash-image`
- `--canvas-size`: output square size, default `1024`
- `--target-width`: visible subject width after normalization, default `820`
- `--min-component-pixels`: remove detached alpha specks smaller than this, default `500`
- `--overwrite`: replace existing outputs in the destination directory

## Repo Integration

If the current project already has [`scripts/nano_banana_cutout.py`](/c:/Work/my_shop/scripts/nano_banana_cutout.py), prefer that repo script when the user wants the same pipeline inside this repository. Use the bundled skill script when the task is cross-project reuse or when you want the workflow to stay self-contained inside the skill.

Código fuente de scripts/run_pipeline.py

Abajo se conserva el código fuente completo de scripts/run_pipeline.py, sin cambios:

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from __future__ import annotations

import argparse
import os
from collections import deque
from pathlib import Path

from PIL import Image

try:
    from google import genai
except ImportError as exc:  # pragma: no cover
    raise SystemExit(
        "Missing dependency: google-genai. Install it with "
        r"'.\.venv\Scripts\python.exe -m pip install google-genai'."
    ) from exc


PROMPT = (
    "Remove the entire background from this product photo and return only the product "
    "on a fully transparent background as a PNG. Keep the full product intact, preserve "
    "thin cable details, clean the inner loops and holes, and do not add any new objects "
    "or shadows."
)
DEFAULT_CANVAS_SIZE = 1024
DEFAULT_TARGET_WIDTH = 820
DEFAULT_MIN_COMPONENT_PIXELS = 500
SUPPORTED_EXTENSIONS = {".jpg", ".jpeg", ".png", ".webp"}


def is_light_background_pixel(r: int, g: int, b: int) -> bool:
    brightness = (r + g + b) / 3
    spread = max(r, g, b) - min(r, g, b)
    return brightness >= 170 and spread <= 35


def to_pil_image(image_obj) -> Image.Image:
    if isinstance(image_obj, Image.Image):
        return image_obj
    pil_image = getattr(image_obj, "_pil_image", None)
    if isinstance(pil_image, Image.Image):
        return pil_image
    as_pil = getattr(image_obj, "pil_image", None)
    if isinstance(as_pil, Image.Image):
        return as_pil
    raise TypeError(f"Unsupported image object type: {type(image_obj)!r}")


def make_transparent_from_borders(image: Image.Image) -> Image.Image:
    rgba = image.convert("RGBA")
    width, height = rgba.size
    pixels = rgba.load()

    visited: set[tuple[int, int]] = set()
    queue: deque[tuple[int, int]] = deque()

    def push_if_bg(x: int, y: int) -> None:
        if (x, y) in visited:
            return
        r, g, b, _ = pixels[x, y]
        if is_light_background_pixel(r, g, b):
            visited.add((x, y))
            queue.append((x, y))

    for x in range(width):
        push_if_bg(x, 0)
        push_if_bg(x, height - 1)
    for y in range(height):
        push_if_bg(0, y)
        push_if_bg(width - 1, y)

    while queue:
        x, y = queue.popleft()
        for nx, ny in ((x - 1, y), (x + 1, y), (x, y - 1), (x, y + 1)):
            if 0 <= nx < width and 0 <= ny < height:
                push_if_bg(nx, ny)

    for x, y in visited:
        pixels[x, y] = (0, 0, 0, 0)

    return rgba


def remove_small_components(image: Image.Image, min_component_pixels: int) -> Image.Image:
    if min_component_pixels <= 0:
        return image

    rgba = image.convert("RGBA")
    alpha = rgba.getchannel("A")
    width, height = rgba.size
    alpha_pixels = alpha.load()
    rgba_pixels = rgba.load()
    visited: set[tuple[int, int]] = set()

    for y in range(height):
        for x in range(width):
            if alpha_pixels[x, y] == 0 or (x, y) in visited:
                continue

            queue: deque[tuple[int, int]] = deque([(x, y)])
            visited.add((x, y))
            component: list[tuple[int, int]] = []

            while queue:
                cx, cy = queue.popleft()
                component.append((cx, cy))
                for nx, ny in ((cx - 1, cy), (cx + 1, cy), (cx, cy - 1), (cx, cy + 1)):
                    if 0 <= nx < width and 0 <= ny < height:
                        if alpha_pixels[nx, ny] == 0 or (nx, ny) in visited:
                            continue
                        visited.add((nx, ny))
                        queue.append((nx, ny))

            if len(component) < min_component_pixels:
                for px, py in component:
                    r, g, b, _ = rgba_pixels[px, py]
                    rgba_pixels[px, py] = (r, g, b, 0)

    return rgba


def normalize_product_image(
    image: Image.Image,
    canvas_size: int,
    target_width: int,
) -> Image.Image:
    rgba = image.convert("RGBA")
    bbox = rgba.getchannel("A").getbbox()
    if bbox is None:
        return Image.new("RGBA", (canvas_size, canvas_size), (0, 0, 0, 0))

    subject = rgba.crop(bbox)
    if subject.height > subject.width:
        subject = subject.rotate(-90, expand=True, resample=Image.Resampling.BICUBIC)
        rotated_bbox = subject.getchannel("A").getbbox()
        if rotated_bbox is not None:
            subject = subject.crop(rotated_bbox)

    scale = target_width / subject.width
    subject = subject.resize(
        (target_width, max(1, int(round(subject.height * scale)))),
        Image.Resampling.LANCZOS,
    )

    canvas = Image.new("RGBA", (canvas_size, canvas_size), (0, 0, 0, 0))
    offset_x = (canvas_size - subject.width) // 2
    offset_y = (canvas_size - subject.height) // 2
    canvas.alpha_composite(subject, (offset_x, offset_y))
    return canvas


def finalize_product_image(
    image: Image.Image,
    canvas_size: int,
    target_width: int,
    min_component_pixels: int,
) -> Image.Image:
    transparent = make_transparent_from_borders(image)
    cleaned = remove_small_components(transparent, min_component_pixels)
    return normalize_product_image(cleaned, canvas_size=canvas_size, target_width=target_width)


def save_first_image_part(
    response,
    dst: Path,
    canvas_size: int,
    target_width: int,
    min_component_pixels: int,
) -> None:
    parts = getattr(response, "parts", None)
    if parts is None and getattr(response, "candidates", None):
        parts = response.candidates[0].content.parts

    if not parts:
        raise RuntimeError("Model returned no content parts.")

    for part in parts:
        inline_data = getattr(part, "inline_data", None)
        if inline_data is None and isinstance(part, dict):
            inline_data = part.get("inline_data")

        if inline_data is None:
            continue

        if hasattr(part, "as_image"):
            image = to_pil_image(part.as_image())
            dst.parent.mkdir(parents=True, exist_ok=True)
            finalize_product_image(
                image,
                canvas_size=canvas_size,
                target_width=target_width,
                min_component_pixels=min_component_pixels,
            ).save(dst)
            return

        data = getattr(inline_data, "data", None)
        if data:
            dst.parent.mkdir(parents=True, exist_ok=True)
            with open(dst, "wb") as handle:
                handle.write(data)
            with Image.open(dst) as image:
                processed = finalize_product_image(
                    image,
                    canvas_size=canvas_size,
                    target_width=target_width,
                    min_component_pixels=min_component_pixels,
                )
                processed.save(dst.with_suffix(".png"))
            if dst.suffix.lower() != ".png":
                dst.unlink(missing_ok=True)
            return

    raise RuntimeError("Model returned text only and no edited image.")


def process_image(
    src: Path,
    dst: Path,
    client,
    model: str,
    canvas_size: int,
    target_width: int,
    min_component_pixels: int,
) -> None:
    with Image.open(src).convert("RGBA") as image:
        response = client.models.generate_content(
            model=model,
            contents=[PROMPT, image],
        )

    save_first_image_part(
        response,
        dst,
        canvas_size=canvas_size,
        target_width=target_width,
        min_component_pixels=min_component_pixels,
    )


def parse_args() -> argparse.Namespace:
    parser = argparse.ArgumentParser(
        description="Cut out product images with Gemini and normalize them to square transparent PNGs."
    )
    parser.add_argument("input_dir", type=Path)
    parser.add_argument("output_dir", type=Path)
    parser.add_argument("--model", default="gemini-2.5-flash-image")
    parser.add_argument("--canvas-size", type=int, default=DEFAULT_CANVAS_SIZE)
    parser.add_argument("--target-width", type=int, default=DEFAULT_TARGET_WIDTH)
    parser.add_argument("--min-component-pixels", type=int, default=DEFAULT_MIN_COMPONENT_PIXELS)
    parser.add_argument("--overwrite", action="store_true")
    return parser.parse_args()


def main() -> None:
    args = parse_args()
    api_key = os.environ.get("GEMINI_API_KEY")
    if not api_key:
        raise SystemExit("Missing GEMINI_API_KEY environment variable.")
    if not args.input_dir.is_dir():
        raise SystemExit(f"Input directory does not exist: {args.input_dir}")
    if args.canvas_size <= 0:
        raise SystemExit("--canvas-size must be positive.")
    if args.target_width <= 0 or args.target_width > args.canvas_size:
        raise SystemExit("--target-width must be positive and no larger than --canvas-size.")
    if args.min_component_pixels < 0:
        raise SystemExit("--min-component-pixels must be >= 0.")

    args.output_dir.mkdir(parents=True, exist_ok=True)
    client = genai.Client(api_key=api_key)

    for src in sorted(args.input_dir.iterdir()):
        if not src.is_file() or src.suffix.lower() not in SUPPORTED_EXTENSIONS:
            continue
        dst = args.output_dir / f"{src.stem}.png"
        if dst.exists() and not args.overwrite:
            print(f"skip {dst}")
            continue
        process_image(
            src,
            dst,
            client,
            args.model,
            canvas_size=args.canvas_size,
            target_width=args.target_width,
            min_component_pixels=args.min_component_pixels,
        )
        print(dst)


if __name__ == "__main__":
    main()

Descargar adjunto: product-cutout-normalize.7z

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