Convert PNGs to JPEGs

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What is the PNG format?

Portable Network Graphics

PNG, which stands for Portable Network Graphics, is a raster graphics file format that supports lossless data compression. Developed as an improved, non-patented replacement for Graphics Interchange Format (GIF), PNG was designed to transfer images on the Internet, not only for professional-quality graphics but also for photographs and other types of digital images. One of the most notable features of PNG is its support for transparency in browser-based applications, making it a crucial format in web design and development.

The inception of PNG can be traced back to 1995, following the patent issues surrounding the compression technique used in GIF format. A call for the creation of a new graphic format was made on the comp.graphics newsgroup, leading to the development of PNG. The main objectives for this new format were to improve upon and overcome the limitations of GIF. Among its goals were to support images with more than 256 colors, include an alpha channel for transparency, provide options for interlacing, and ensure the format was patent-free and suitable for open-source development.

PNG files excel in the quality of image preservation, supporting a range of color depths, from 1-bit black and white to 16-bit per channel for red, green, and blue (RGB). This wide range of color support makes PNG suitable for storing line drawings, text, and iconic graphics at a small file size. Additionally, PNG's support for an alpha channel allows for varying degrees of transparency, enabling intricate effects like shadows, glows, and semi-transparent objects to be rendered with precision in digital images.

One of the standout features of PNG is its lossless compression algorithm, defined using the DEFLATE method. This algorithm is designed to reduce the file size without sacrificing any image quality. The efficiency of the compression varies depending on the type of data being compressed; it is particularly effective for images with large areas of uniform color or repeated patterns. Despite the lossless nature of the compression, it's important to note that PNG might not always result in the smallest possible file size compared to formats like JPEG, especially for complex photographs.

The structure of a PNG file is based on chunks, where each chunk represents a certain kind of data or metadata about the image. There are four main types of chunks in a PNG file: IHDR (Image Header), which contains basic information about the image; PLTE (Palette), which lists all the colors used in indexed color images; IDAT (Image Data), which contains the actual image data compressed with the DEFLATE algorithm; and IEND (Image Trailer), which marks the end of the PNG file. Additional ancillary chunks can provide more details about the image, such as text annotations and gamma values.

PNG also incorporates several features aimed at improving the display and transfer of images over the internet. Interlacing, particularly using the Adam7 algorithm, allows an image to be loaded progressively, which can be especially useful when viewing images over slower internet connections. This technique displays a low-quality version of the entire image first, which gradually increases in quality as more data is downloaded. This feature not only enhances user experience but also provides a practical advantage for web usage.

Transparency in PNG files is handled in a more sophisticated manner compared to GIF. Whereas GIF supports simple binary transparency — a pixel is either fully transparent or fully opaque — PNG introduces the concept of alpha transparency. This allows pixels to have varying levels of transparency, from fully opaque to fully transparent, enabling smoother blending and transitions between the image and the background. This feature is particularly important for web designers who need to overlay images on backgrounds of varying colors and patterns.

Despite its many advantages, PNG does have some limitations. For instance, it is not the best choice for storing digital photographs in terms of file size efficiency. While PNG's lossless compression ensures no loss of quality, it can result in larger file sizes compared to lossy formats like JPEG, which are specifically designed for compressing photographs. This makes PNG less suitable for applications where bandwidth or storage capacity is limited. Additionally, PNG does not natively support animated images, a feature that formats like GIF and WebP offer.

Optimization techniques can be applied to PNG files to reduce their file size for web use without compromising image quality. Tools such as PNGCRUSH and OptiPNG employ various strategies, including choosing the most efficient compression parameters and reducing the color depth to the most appropriate level for the image. These tools can significantly reduce the size of PNG files, making them more efficient for web use, where loading times and bandwidth usage are critical concerns.

Furthermore, the inclusion of gamma correction information within PNG files ensures that images are displayed more consistently across different devices. Gamma correction helps adjust the brightness levels of an image according to the display device's characteristics. This feature is particularly valuable in the context of web graphics, where images may be viewed on a wide variety of devices with differing display properties.

The legal status of PNG has contributed to its wide acceptance and adoption. Being free of patents, PNG avoids the legal complexities and licensing fees associated with some other image formats. This has made it particularly attractive for open-source projects and applications where cost and legal freedom are important considerations. The format is supported by a broad range of software, including web browsers, image editing programs, and operating systems, facilitating its integration into various digital workflows.

Accessibility and compatibility are also key strengths of the PNG format. With its support for colors ranging from monochrome to truecolor with alpha transparency, PNG files can be used in a wide variety of applications, from simple web graphics to high-quality print materials. Its interoperability across different platforms and software ensures that images saved in PNG format can be easily shared and viewed without concern for compatibility issues.

Technical advancements and community contributions continue to enhance the PNG format. Innovations such as APNG (Animated Portable Network Graphics) introduce support for animation while maintaining backward compatibility with standard PNG viewers. This evolution reflects the format's adaptability and the active community's efforts to expand its capabilities in response to user needs. Such developments ensure the ongoing relevance of PNG in a rapidly evolving digital landscape.

In conclusion, the PNG image format has become a staple in digital image sharing and storage, striking a balance between quality preservation and file size efficiency. Its ability to support high color depths, alpha transparency, and lossless compression make it a versatile choice for a wide range of applications, from web design to archival storage. While it may not be the optimal choice for every situation, its strengths in quality, compatibility, and legal freedom make it an invaluable asset in the world of digital imaging.

What is the JPEG format?

Joint Photographic Experts Group JFIF format

JPEG, which stands for Joint Photographic Experts Group, is a commonly used method of lossy compression for digital images, particularly for those images produced by digital photography. The degree of compression can be adjusted, allowing a selectable tradeoff between storage size and image quality. JPEG typically achieves 10:1 compression with little perceptible loss in image quality.

The JPEG compression algorithm is at the core of the JPEG standard. The process begins with a digital image being converted from its typical RGB color space into a different color space known as YCbCr. The YCbCr color space separates the image into luminance (Y), which represents the brightness levels, and chrominance (Cb and Cr), which represent the color information. This separation is beneficial because the human eye is more sensitive to variations in brightness than color, allowing the compression to take advantage of this by compressing color information more than luminance.

Once the image is in the YCbCr color space, the next step in the JPEG compression process is to downsample the chrominance channels. Downsampling reduces the resolution of the chrominance information, which typically doesn't affect the perceived quality of the image significantly, due to the human eye's lower sensitivity to color detail. This step is optional and can be adjusted depending on the desired balance between image quality and file size.

After downsampling, the image is divided into blocks, typically 8x8 pixels in size. Each block is then processed separately. The first step in processing each block is to apply the Discrete Cosine Transform (DCT). The DCT is a mathematical operation that transforms the spatial domain data (the pixel values) into the frequency domain. The result is a matrix of frequency coefficients that represent the image block's data in terms of its spatial frequency components.

The frequency coefficients resulting from the DCT are then quantized. Quantization is the process of mapping a large set of input values to a smaller set – in the case of JPEG, this means reducing the precision of the frequency coefficients. This is where the lossy part of the compression occurs, as some image information is discarded. The quantization step is controlled by a quantization table, which determines how much compression is applied to each frequency component. The quantization tables can be adjusted to favor higher image quality (less compression) or smaller file size (more compression).

After quantization, the coefficients are arranged in a zigzag order, starting from the top-left corner and following a pattern that prioritizes lower frequency components over higher frequency ones. This is because lower frequency components (which represent the more uniform parts of the image) are more important for the overall appearance than higher frequency components (which represent the finer details and edges).

The next step in the JPEG compression process is entropy coding, which is a method of lossless compression. The most common form of entropy coding used in JPEG is Huffman coding, although arithmetic coding is also an option. Huffman coding works by assigning shorter codes to more frequent occurrences and longer codes to less frequent occurrences. Since the zigzag ordering tends to group similar frequency coefficients together, it increases the efficiency of the Huffman coding.

Once the entropy coding is complete, the compressed data is stored in a file format that conforms to the JPEG standard. This file format includes a header that contains information about the image, such as its dimensions and the quantization tables used, followed by the Huffman-coded image data. The file format also supports the inclusion of metadata, such as EXIF data, which can contain information about the camera settings used to take the photograph, the date and time it was taken, and other relevant details.

When a JPEG image is opened, the decompression process essentially reverses the compression steps. The Huffman-coded data is decoded, the quantized frequency coefficients are de-quantized using the same quantization tables that were used during compression, and the inverse Discrete Cosine Transform (IDCT) is applied to each block to convert the frequency domain data back into spatial domain pixel values.

The de-quantization and IDCT processes introduce some errors due to the lossy nature of the compression, which is why JPEG is not ideal for images that will undergo multiple edits and re-saves. Each time a JPEG image is saved, it goes through the compression process again, and additional image information is lost. This can lead to a noticeable degradation in image quality over time, a phenomenon known as 'generation loss'.

Despite the lossy nature of JPEG compression, it remains a popular image format due to its flexibility and efficiency. JPEG images can be very small in file size, which makes them ideal for use on the web, where bandwidth and loading times are important considerations. Additionally, the JPEG standard includes a progressive mode, which allows an image to be encoded in such a way that it can be decoded in multiple passes, each pass improving the image's resolution. This is particularly useful for web images, as it allows a low-quality version of the image to be displayed quickly, with the quality improving as more data is downloaded.

JPEG also has some limitations and is not always the best choice for all types of images. For example, it is not well-suited for images with sharp edges or high contrast text, as the compression can create noticeable artifacts around these areas. Additionally, JPEG does not support transparency, which is a feature provided by other formats like PNG and GIF.

To address some of the limitations of the original JPEG standard, new formats have been developed, such as JPEG 2000 and JPEG XR. These formats offer improved compression efficiency, support for higher bit depths, and additional features like transparency and lossless compression. However, they have not yet achieved the same level of widespread adoption as the original JPEG format.

In conclusion, the JPEG image format is a complex balance of mathematics, human visual psychology, and computer science. Its widespread use is a testament to its effectiveness in reducing file sizes while maintaining a level of image quality that is acceptable for most applications. Understanding the technical aspects of JPEG can help users make informed decisions about when to use this format and how to optimize their images for the balance of quality and file size that best suits their needs.

Supported formats

AAI.aai

AAI Dune image

AI.ai

Adobe Illustrator CS2

AVIF.avif

AV1 Image File Format

AVS.avs

AVS X image

BAYER.bayer

Raw Bayer Image

BMP.bmp

Microsoft Windows bitmap image

CIN.cin

Cineon Image File

CLIP.clip

Image Clip Mask

CMYK.cmyk

Raw cyan, magenta, yellow, and black samples

CMYKA.cmyka

Raw cyan, magenta, yellow, black, and alpha samples

CUR.cur

Microsoft icon

DCX.dcx

ZSoft IBM PC multi-page Paintbrush

DDS.dds

Microsoft DirectDraw Surface

DPX.dpx

SMTPE 268M-2003 (DPX 2.0) image

DXT1.dxt1

Microsoft DirectDraw Surface

EPDF.epdf

Encapsulated Portable Document Format

EPI.epi

Adobe Encapsulated PostScript Interchange format

EPS.eps

Adobe Encapsulated PostScript

EPSF.epsf

Adobe Encapsulated PostScript

EPSI.epsi

Adobe Encapsulated PostScript Interchange format

EPT.ept

Encapsulated PostScript with TIFF preview

EPT2.ept2

Encapsulated PostScript Level II with TIFF preview

EXR.exr

High dynamic-range (HDR) image

FARBFELD.ff

Farbfeld

FF.ff

Farbfeld

FITS.fits

Flexible Image Transport System

GIF.gif

CompuServe graphics interchange format

GIF87.gif87

CompuServe graphics interchange format (version 87a)

GROUP4.group4

Raw CCITT Group4

HDR.hdr

High Dynamic Range image

HRZ.hrz

Slow Scan TeleVision

ICO.ico

Microsoft icon

ICON.icon

Microsoft icon

IPL.ipl

IP2 Location Image

J2C.j2c

JPEG-2000 codestream

J2K.j2k

JPEG-2000 codestream

JNG.jng

JPEG Network Graphics

JP2.jp2

JPEG-2000 File Format Syntax

JPC.jpc

JPEG-2000 codestream

JPE.jpe

Joint Photographic Experts Group JFIF format

JPEG.jpeg

Joint Photographic Experts Group JFIF format

JPG.jpg

Joint Photographic Experts Group JFIF format

JPM.jpm

JPEG-2000 File Format Syntax

JPS.jps

Joint Photographic Experts Group JPS format

JPT.jpt

JPEG-2000 File Format Syntax

JXL.jxl

JPEG XL image

MAP.map

Multi-resolution Seamless Image Database (MrSID)

MAT.mat

MATLAB level 5 image format

PAL.pal

Palm pixmap

PALM.palm

Palm pixmap

PAM.pam

Common 2-dimensional bitmap format

PBM.pbm

Portable bitmap format (black and white)

PCD.pcd

Photo CD

PCDS.pcds

Photo CD

PCT.pct

Apple Macintosh QuickDraw/PICT

PCX.pcx

ZSoft IBM PC Paintbrush

PDB.pdb

Palm Database ImageViewer Format

PDF.pdf

Portable Document Format

PDFA.pdfa

Portable Document Archive Format

PFM.pfm

Portable float format

PGM.pgm

Portable graymap format (gray scale)

PGX.pgx

JPEG 2000 uncompressed format

PICON.picon

Personal Icon

PICT.pict

Apple Macintosh QuickDraw/PICT

PJPEG.pjpeg

Joint Photographic Experts Group JFIF format

PNG.png

Portable Network Graphics

PNG00.png00

PNG inheriting bit-depth, color-type from original image

PNG24.png24

Opaque or binary transparent 24-bit RGB (zlib 1.2.11)

PNG32.png32

Opaque or binary transparent 32-bit RGBA

PNG48.png48

Opaque or binary transparent 48-bit RGB

PNG64.png64

Opaque or binary transparent 64-bit RGBA

PNG8.png8

Opaque or binary transparent 8-bit indexed

PNM.pnm

Portable anymap

PPM.ppm

Portable pixmap format (color)

PS.ps

Adobe PostScript file

PSB.psb

Adobe Large Document Format

PSD.psd

Adobe Photoshop bitmap

RGB.rgb

Raw red, green, and blue samples

RGBA.rgba

Raw red, green, blue, and alpha samples

RGBO.rgbo

Raw red, green, blue, and opacity samples

SIX.six

DEC SIXEL Graphics Format

SUN.sun

Sun Rasterfile

SVG.svg

Scalable Vector Graphics

SVGZ.svgz

Compressed Scalable Vector Graphics

TIFF.tiff

Tagged Image File Format

VDA.vda

Truevision Targa image

VIPS.vips

VIPS image

WBMP.wbmp

Wireless Bitmap (level 0) image

WEBP.webp

WebP Image Format

YUV.yuv

CCIR 601 4:1:1 or 4:2:2

Frequently asked questions

How does this work?

This converter runs entirely in your browser. When you select a file, it is read into memory and converted to the selected format. You can then download the converted file.

How long does it take to convert a file?

Conversions start instantly, and most files are converted in under a second. Larger files may take longer.

What happens to my files?

Your files are never uploaded to our servers. They are converted in your browser, and the converted file is then downloaded. We never see your files.

What file types can I convert?

We support converting between all image formats, including JPEG, PNG, GIF, WebP, SVG, BMP, TIFF, and more.

How much does this cost?

This converter is completely free, and will always be free. Because it runs in your browser, we don't have to pay for servers, so we don't need to charge you.

Can I convert multiple files at once?

Yes! You can convert as many files as you want at once. Just select multiple files when you add them.