Vectorizer – Must Have AI
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Vectorizer
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Image to SVG (2)

Vectorizer

Trace pixels to vectors automatically with AI.

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Starting price from $9.99/mo

Tool Information

Vectorizer.AI is a tool designed to facilitate the smooth conversion of pixel-based (raster) PNG and JPG images into scalable vector graphics (SVGs) fully automatically. Built on a foundation of deep learning and classical algorithms, this tool analyzes, processes, and transforms your image from a grid of pixels to geometrical shapes. These resulting vector images can be expanded to any resolution without losing quality, allowing for a wider range of applications, including printing, cutting, embroidering and more.A core feature of Vectorizer.AI is its deep vector engine that employs artificial intelligence networks to create thorough and precise vector conversions. It also utilizes a unique computational geometry framework, the Vector Graph, which enables automated edits and localized optimizations that are challenging to achieve with conventional vector image representations. Rather than limiting its functioning to simple Bezier curves, it fits complex geometric shapes where applicable to provide an ideal fit and unmatched consistency. It supports various types of curves and uses them as needed, providing results that are more natural than those from other vectorizers. High performance is ensured through the full utilization of state-of-the-art GPUs for deep learning, and efficient, parallel classical algorithms conducted on multi-core CPUs.Vectorizer.AI takes care of features that are less than a pixel wide and places boundaries according to the anti-aliasing pixel values. Fully automatic, it doesnt require user input to produce results, working effectively on scanner images, photos of sketches, drawn artwork, and photographs. It also supports full 32-bit color, including the alpha channel, and allows for a wide range of export options, including SVG, PDF, EPS, DXF, and PNG formats.

F.A.Q (20)

Vectorizer.AI is an AI-driven tool purposed for converting JPEG and PNG bitmaps into scalable vector graphics (SVGs). The tool uses high-end GPUs and multi-core CPUs to analyze and process images, transforming them from pixel-based to geometric shapes. The resultant vector images maintain perfect clarity, even when scaled to any resolution, making the tool perfect for uses such as printing, cutting and embroidering. Also, Vectorizer.AI enables users to preview results and download vectorized images in numerous formats—including SVG, PDF, EPS, DXF, and PNG.

Vectorizer.AI deploys deep learning and classical algorithms to convert JPEG and PNG bitmaps into SVG vectors. During the conversion process, the tool thoroughly analyzes, processes, and transforms the bitmap image from a grid of pixels to geometrical shapes. The deep vector engine of Vectorizer.AI uses specific AI networks to create precise and thorough vector conversions. Thus converting even the pixel details of an image into precise geometric shapes.

Vectorizer.AI utilizes several powerful technologies in processing images. Primarily, it uses an artificial intelligence network for precise vector conversions, known as the deep vector engine. Additionally, Vectorizer.AI employs a unique computational geometry framework, the Vector Graph, that allows for automated edits and localized optimizations. The tool maximizes the power of high-end GPUs for deep learning and applies efficient, parallel classical algorithms run on multi-core CPUs ensuring high performance.

Vectorizer.AI ensures image clarity at any resolution by converting pixel-based images into geometric shapes. Since geometric shapes can be mathematically scaled without losing any detail, the resultant vector images can be enlarged or minimized to any resolution without loss of quality. This distinctive image representation means that vectorized graphics can provide a high level of detail irrespective of the scale.

Vectorizer.AI supports a wide variety of output formats. Users can download their vectorized images in formats such as SVG, PDF, EPS, DXF, and PNG. Having multiple output formats provides users with the flexibility to choose the format that best suits their requirements.

Vectorizer.AI distinguishes itself from other vectorizers through its AI technology. The AI element helps in accurately capturing minute details and producing sensible interpretations when pixel data is ambiguous. Additionally, unlike other tools that limit their function to simple Bezier curves, Vectorizer.AI fits complex geometric shapes, providing an ideal fit and unparalleled consistency. The tool also supports different curve types, resulting in more natural results compared to other vectorizers.

Vectorizer.AI's AI models have been developed in-house and have been trained using a proprietary dataset. This training tends to be recurrent, allowing the model to learn and improve its accuracy in capturing details and making intelligent interpretations when faced with ambiguous pixel data.

Vectorizer.AI does indeed house the functionality for cleaning up corners and matching tangents. This process is part of Vectorizer.AI’s raster-to-vector conversion methodology, leading to cleaner outputs and improved image consistency compared to conventional vectorizers.

Vectorizer.AI supports a variety of input formats. Presently, users can input files in formats including JPEG, PNG, WEBP, BMP, and GIF. This multiplicity of format accommodations helps in broadening the reach of the tool, making it usable to a large pool of users regardless of their required format.

Vectorizer.AI is under active development with plans to introduce more exciting features in the future. However, detailed specifics about what these future features could be are not provided on their website.

Vectorizer.AI intensely leverages Deep Learning and Vector Conversion in its process. Deep Learning techniques are used to train artificial intelligence networks, effectively allowing the tool to identify and convert distinct pixelated details into vector shapes. A unique feature, the Vector Graph, allows automated edits and localized optimization, which brings about high-quality vector conversions (Vector Conversion).

Geometric Shapes and Image Transformation are core elements in Vectorizer.AI’s functionality. In the conversion process, the tool transforms a bitmap image from a grid of pixels to geometrical shapes. These serve as the building blocks of the resultant vectorized image. The transformation from pixel representations to geometric shapes means that the quality of the image won't degrade, even when the resolution changes.

Vectorizer.AI makes a decision to fit whole geometric shapes as a part of the process towards producing high-quality vector conversion results. Unlike other vectorizers that only utilize simple Bezier curves, Vectorizer.AI fits complex geometric shapes to provide an ideal fit and unmatched consistency. This full shape fitting leads to more accurate, naturally flowing vector images.

Vectorizer.AI ensures high-performance conversions by leveraging the power of cutting-edge GPUs for deep learning and running efficient, parallel classical algorithms on multi-core CPUs. This approach allows Vectorizer.AI to deliver high-quality vector conversions at a much faster pace than traditional methods.

Vectorizer.AI employs Sub-Pixel Precision technology in handling features less than a pixel wide. This means it can trace out details that are less than a pixel wide and place boundaries according to the anti-aliasing pixel values, ensuring that even the tiniest details are not lost in the conversion process.

Vectorizer.AI is fully automated and doesn't require any user input to deliver its results. It is designed to be capable of effectively processing various types of images, including scanner images, photos of sketches, drawn artwork, and photographs, without requiring user intervention.

Vectorizer.AI can indeed operate effectively on scanner images, photos of sketches, drawn artwork, and photographs. It is designed to work well on a variety of image types, not limited to logos and other rasterized vector art. Its algorithm manages to convert these different types of images into precise vector representations, all without requiring user input.

Vectorizer.AI supports a wide range of curve types as part of the vectorization process. Apart from simple straight lines, it accommodates circular arcs, elliptical arcs, and quadratic and cubic Bezier curves. Most other vector graphic software applications try to simplify things to contain only cubic Bezier curves, which is a limited approximation. But Vectorizer.AI employs a comprehensive range of curve types to provide more natural and accurate results.

Vectorizer.AI offers a range of export options to its users. Users can download their vectorized images in formats including SVG, PDF, EPS, DXF, and PNG. Plus, users have the ability to control how shapes are drawn, how they are grouped, and a number of other format-specific options. This offers users more control over the output of the vectorized images.

Vectorizer.AI does offer an option to pre-crop images. Pre-cropping is used to maximize the quality of the resultant vectorized image by allowing you to crop the portion of your photo that you wish to convert to a vector. By cutting out the portion of the bitmap to vectorize, only the cropped area counts against the resolution limit imposed by the tool.

Pros and Cons

Pros

  • Converts JPEG
  • PNG to SVG
  • Uses multi-core CPUs
  • Uses powerful GPUs
  • Analyzed images retain clarity
  • Images can be upscaled
  • Good for printing
  • cutting
  • embroidering
  • Preview before download
  • Multiple download formats: SVG
  • PDF
  • EPS
  • DXF
  • PNG
  • Accurate detail capture
  • Handles ambiguous pixel data
  • Possible to fit geometric shapes
  • Clean corner output
  • Tangent matching
  • Curve fairing
  • Supports numerous input formats: JPEG
  • PNG
  • WEBP
  • BMP
  • GIF
  • Continual tool development
  • Pixel to vector automatic conversion
  • Deep learning based
  • Classical algorithms integration
  • Sub-pixel precision
  • Handles different curve types
  • Less than pixel wide features
  • Works on scanner images
  • drawn artwork
  • photos
  • Full 32-bit color supported
  • Full Color & Transparency
  • Supports ARGB input
  • Various export choices
  • Maximum image pixel size of 3 megapixels
  • Maximum image file size of 30 megabytes
  • Image cropping supported
  • Resolution maximization
  • Pre-cropping
  • Image Types compatibility
  • Fully automatic operation
  • High Performance

Cons

  • Limited to 3 megapixels
  • Only works on images
  • Limited file size
  • Use for machine learning prohibited
  • Data retention only 24 hours
  • Not always fully automatic
  • Pre-cropping needed for large images
  • Possible compatibility issues

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