Excire Blog

AI in Photography: Your Essential (and Balanced) Guide

AI in photography image generated by DALL-E

These days, we photographers can’t go two minutes without encountering an opinion about AI. It’s usually negative and often extreme (e.g., “AI will ruin photography forever”), and I can certainly empathize. After all, one of the most well-recognized forms of artificial intelligence in photography—AI image generation—threatens to reduce the value of photography (and photographers) by filling the world with pixel-perfect photo lookalikes that can be produced in an instant and without apparent skill. 

But like most things in life, the truth is a lot more complicated. AI image generation gets a lot of airtime, but it’s far from the only instance of AI in photography. Artificial intelligence now appears in a variety of ways and with very different purposes; there are AI photo generators, AI photo organizers, AI photo editors, AI editing tools, AI cameras, and more. 

As a result, it feels unfair to talk about “AI in photography” as if it were a single entity. And even if we were to focus on a single AI use case in photography, it likely affects individuals differently; for instance, while many photographers dislike AI image generators, others have enthusiastically taken up image generation as a method of artistic expansion.

Given all the discussion of AI in photography and all of the misunderstandings, I want to spend some time exploring the various ways that artificial intelligence appears in the photography world, as well as the benefits and drawbacks. As a photographer with a longstanding interest in AI—and as someone who has tried a slew of AI-powered photography tools in both a personal and a professional capacity—I’m well-placed to help you understand what AI in photography actually is, how it works, and what it can mean for the world of photography more broadly. 

Let’s dive right in!

What Is AI in Photography? 

A person holding a futuristic looking camera, as created by DALL-E
I asked OpenAI’s DALL-E program to generate an image representing AI in photography. This was the result.

In my experience, most people have misconceptions about the nature of artificial intelligence. The general assumption is that AI is a technology capable of learning from the user—that as the user offers input, the AI gets better at doing what the user wants (in contrast to algorithmic technology, which is static and can only follow an unchanging set of instructions).

But while certain AI software does indeed work this way, it’s generally not the case in photography applications. Technology that learns regularly from user input is often costly since it requires constant updating with each new input. And in certain applications, it produces subpar results because one-off inputs from a single user generally don’t provide enough training data for an AI model to learn effectively. 

Instead, most AI in the photography sphere works differently: 

First, a model is trained on a huge amount of data to do some specific task (e.g., identify objects in a photo).

Second, the AI model is disconnected from the learning environment and packaged into a photography product. 

The result is an AI-powered application capable of impressive feats (e.g., automatically applying keywords to photos) but that is no longer adjusted in response to new input.

A Quick Aside on Artificial Intelligence and Machine Learning

A dark workspace with computer code on the monitors

In the photography world, artificial intelligence often gets confused with machine learning. These are two related but distinctly separate concepts. 

Machine learning is a process. Through machine learning, models learn patterns from data to make predictions without being explicitly programmed.

Artificial intelligence, on the other hand, is a result. When a program can successfully complete a sophisticated task—such as mimicking an editing style—it’s generally categorized as “AI.” In other words, “AI” isn’t a precise label but is instead a general classifier applied to various software with “intelligent” capabilities. 

Additionally, there’s no single underlying method for creating artificial intelligence. While many AI models are indeed produced through machine learning, that isn’t always the case (and not all machine learning results in what would conventionally be called “AI,” either). 

Types of AI in Photography

As I emphasized above, artificial intelligence in photography doesn’t appear in just one form. Rather, there are different types of AI photography software, each with its uses, benefits, and drawbacks. 

In this section, I walk you through the most common types of AI in photography, starting with:

AI Photo Editing

Over the last few years, AI tools have been incorporated into nearly all mainstream image-editing programs. Skylum led the way with its early AI-powered sliders and one-click sky-replacement tool, but today, you’ll find AI functionality in a wide range of editors, including Lightroom, Photoshop, ON1 Photo RAW, and DxO PhotoLab 8—so if you have access to the latest version of a popular photo editor, then you likely have access to a form of AI. 

These AI tools are generally capable of tailoring an editing adjustment or mask to the specific image file. For instance, Lightroom’s AI masking tools are capable of identifying and selecting specific image elements (such as skies) or even facial features (such as eyes):

An AI-generated mask of the sky in Lightroom

While Luminar Neo’s Enhance AI sliders apply various aesthetically pleasing adjustments (e.g., increased/decreased contrast and saturation) based on the specific characteristics of the image:

Luminar Neo's editing tools, including Enhance AI sliders

The idea here is to save time by avoiding tedious manual tasks (such as hand-selecting a subject’s facial features), but AI editing tools can also edit images beyond the user’s current skill level to create enhanced results. For instance, a landscape photography beginner may not recognize that their sunset photo would benefit from a contrast boost selectively applied to the clouds, but Luminar’s Sky Enhancer AI slider might do exactly that.

Of course, the level of AI integration varies widely from editor to editor. Skylum’s Luminar Neo includes a slew of AI-powered tools, while Lightroom relies far more heavily on manual features and has added AI editing tools much more incrementally.  

A list of Luminar Neo's editing tools
Luminar Neo includes a lot of AI features.

AI photo editing exists in other forms, however. Companies such as Neurapix and Imagen offer a more comprehensive, streamlined AI editing workflow; here, the photographer submits photos they’ve already edited in their own style, which are used to develop—through machine learning—an AI “preset” (or “profile”) capable of consistently replicating the style. The preset can then be applied to many photos at once, so when the photographer needs to process a new batch of photos, they can skip manual editing entirely.

Neurapix website screenshot selling AI editing presets

Finally, some companies offer software and tools designed to enhance images, not by adjusting editing parameters but by adding or swapping out pixels. Topaz Labs’ Gigapixel software, for example, uses AI to sharpen, denoise, and upscale images, which allows photographers to improve (or even save) files that are soft, noisy, and low quality. 

Topaz Labs Gigapixel 8 screenshot

AI Photo Management

Excire Foto 2025 facial-recognition features
Excire Foto 2025 offers plenty of AI-powered photo-management tools, including several facial-recognition features.

AI photo-management tools are often overlooked by photographers, but I think this is a mistake. Here, I’m referring to programs that use AI models to help photographers organize, locate, and/or cull their image files. And while image management may not seem like an exciting topic, these AI tools can save photographers a huge amount of time and effort. 

AI image organizers vary in their capabilities, but standard tools include: 

  • Smart tagging, where the software uses AI to automatically apply keywords to photos.
  • Deduplication, where the software uses AI to identify duplicate files in an image catalog.
  • Facial-recognition search, where the user can quickly find (and tag) specific people in their photos.

A few programs go far beyond the basic AI photo-management toolkit, however. For instance, in addition to the three tools listed above, Excire Foto 2025 offers: 

  • Prompt search, which allows the user to retrieve images from anywhere in their catalog by inputting a natural-language description of the photo.
  • Smart culling, which groups photos based on a variety of characteristics (including visual similarity, burst sequences, and content) and can even automatically select the best photos from a large batch using criteria such as sharpness and exposure.
  • A variety of other search and image sorting functions, including similarity search, face search, and aesthetic scores.
Excire Foto 2025 prompt search
Simply type in a description of your image, and Excire can retrieve it in an instant.

One concern with many AI-powered photo managers is privacy: In order to make images “visible” to AI models, files often get sent off for analysis in the cloud or to a third party. This is legitimate, and it’s one of the reasons why Excire’s software is so popular; the AI functions work locally on the user’s computer so that nothing is sent off for analysis. 

Bottom line: If you’re concerned about privacy, just make sure you choose your photo manager wisely. I myself regularly use Excire’s AI photo-management tools to keep my image catalog in order. (Before I adopted AI tools, my photo library was an absolute mess, but thanks to automatic keywording, prompt search, smart culling, and more, my images feel far more organized and accessible!)

AI Image Generation

Thus far, I’ve discussed AI photo editing and AI photo organization, and for the most part, these AI applications work in a straightforward, relatively uncontroversial way: by acting on the photographer’s existing images to find, categorize, mask, and enhance. 

Some AI editing tools have drawn criticism for the ease with which they allow for “unnatural” manipulation of an image (Skylum’s sky-replacement tool is one example), while AI sliders and one-click presets occasionally come under fire for simulating artistic processes and decision-making. On the whole, however, these AI applications have been broadly accepted (or at least tolerated) by the photographic community. 

AI image generation is a very different story, however. 

I’m referring to tools that either:

  1. Produce photo-realistic images in response to prompts
  2. Add photo-realistic elements to an existing image

Midjourney, DALL-E, and Stable Diffusion are all well-known examples of the first type of image generator. The user types in a prompt, such as “Photo of a puppy playing in a field,” and the AI model produces a corresponding “image,” as I did using OpenAI’s DALL-E:

Prompting ChatGPT to create an image of a puppy in a field

The second type of image generator is generally found within more comprehensive editing programs. Photoshop’s Adobe Firefly, for instance, allows the user to input prompts that generate new image elements on top of existing image elements. (Photoshop also offers a Generative Expand feature, which generates new content beyond an image’s original borders.) 

These AI tools are controversial. There are many reasons for this, but three come up frequently: 

1. Generative AI Causes Confusion

The concern here is that an AI-generated image may be visually indistinguishable from a photograph, yet it’s not tethered to reality.

Therefore, an AI image of people playing football in the park might be persuasive to the viewer (that is, the viewer believes that the football game occurred as depicted), yet the game never happened, and the depicted players never existed.

Such an example may seem harmless—after all, who cares about whether a random football game ever took place?—but for at least some viewers, the reality of an image is important.

Additionally, image generators can be used to persuade viewers of more harmful truths, as concerns around AI deepfakes have shown.

A major caveat here, however, has to do with the quality of the AI-generated images. If AI photos are easy to identify (as many currently are), then this concern is alleviated somewhat—though it’s difficult to imagine that we won’t soon reach a stage where AI-generated files are indeed indistinguishable from conventional photographs.

Prompting ChatGPT for an AI-generated image representing AI and photography.
My AI-generated “photo” featured at the start of this article is fairly recognizable as an AI image, but that isn’t always the case.

2. Generative AI Rips Off Photographers‘ Hard Work

This criticism isn’t about the resulting image but about how it’s produced. Image generators are trained to create fake images by analyzing millions of real images, all of which were created by photographers and artists.

There’s a potential legal issue here—how were the training photographs obtained, and did the creator consent?—but there’s also an ethical one: If a model produces “photos” simply by identifying patterns of pixels in existing images, the result is unoriginal and is a form of copying/plagiarism (or so you might argue). 

3. Generative AI Threatens or Cheapens True Photography

This concern has several layers, but put simply: If AI can replicate photographs with very little cost and effort, won’t photographers become obsolete? Why would a company buy a stock photo for their marketing brochure or an abstract flower print for their waiting room walls when they can generate a custom image for just a few pennies? 

To me, there is at least some truth to this argument, though it doesn’t seem relevant to all forms of photography. AI-generated wedding photos, for instance, will likely remain unpopular, for obvious reasons—though I will note that AI-generated self-portraits have become fairly popular over the last couple of years.

AI Camera Software

Briefly, I want to mention one more AI photography application: camera technology. 

For instance, AI is now incorporated directly into some cameras’ autofocusing technology, which allows for better AF performance; Sony’s a7R V camera relies on AI to effectively identify subjects, including eyes, trains, cars, birds, planes, and more. 

So far, this AI camera technology has remained relatively underdeveloped, but I expect to see a significant expansion of AI in cameras in the future. I wouldn’t be surprised if cameras five years from now harness AI to meter more effectively, blend exposures at the moment of capture to handle high-dynamic range scenes, optimize white balancing, provide compositional guidance on the fly, apply in-camera perspective correction, and more. 

So Is AI in Photography Good or Bad?  

At the end of the day, AI is not monolithic; rather, it’s a category of “smart” tools, each with its own possible uses. 

And as I hope this article showed, it’s therefore difficult to make blanket statements about the value of artificial intelligence applications in photography. Many AI tools—such as image organizers, editors, and camera technology—do indeed save a lot of time for photographers and offer comparatively few drawbacks. I myself rely heavily on an AI-powered image manager (Excire) and an AI-equipped editor (Lightroom Classic), and I certainly wouldn’t protest if my next camera firmware update included AI-assisted object detection.

On the other hand, AI image generators are more difficult to parse. These programs bring up thorny issues regarding copyright, the nature of art, and the potential to negatively affect photography professionals. 

At the end of the day, it’s up to you to decide how you feel about each form of AI. I encourage you to ask your own questions, form your own opinions, and make decisions accordingly. Good luck!

Excire Foto Office Edition

The Excire Photo Office Edition is a special solution for companies and team use. In addition to the usual AI power for simple and intuitive photo management, it has the following additional features:

  • Hide option for irrelevant keywords
  • Function to adopt folder names as keywords
  • Sharing via SFTP
  • Two-stage role concept
  • Right-of-use period as a supplement to the metadata and corresponding filter option
  • Shared database on a network drive

Language & version

Supported languages

German & English

Current version

1.1.1

Minimum system requirements

Processor

Mehrkernprozessor mit 64-bit und AVX Unterstützung
Multi-core processor with 64-bit and AVX support. Older AMD processors like the AMD Phenom™ II X6 1100T and AMD Phenom™ II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.

Operating system

macOS 11 (or newer) or Windows 10 (64-bit) or Windows 11 (64-bit)

Memory

Minimum 8GB RAM is required. However, 16GB or more is recommended.

Hard disk

The Excire databases require about 250 MB for 100,000 photos.
The preview storage will then be about 25 GB
at the highest quality, including raw formats,
and when a preview is generated for each photo.

Excire Search 2024 - Trial

Language & version

Supported languages
German, English, French, Italian and Spanish
Current version

4.0.0

Minimum system requirements

Processor
Multicore processor with 64-bit and AVX support Older AMD processors like AMD Phenom(tm) II X6 1100T and AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Memory
8GB RAM. However, for large catalogs (> 100,000 photos) we recommend 16GB or more
Hard disk
375 MB of free hard disk space for the base installation and additional memory for image signatures. For example, an Adobe Lightroom catalog of 100,000 images requires about another 800 MB of additional memory.

Excire Search 2024

Excire Search is the perfect solution for all Adobe Lightroom Classic users. The smart Lightroom plugin analyzes and tags photos automatically and extends Lightroom with powerful AI search functions. With just a few clicks, Excire Search finds exactly the photos you are looking for. This makes image management fun again and hours of image searching a thing of the past. 

Available for Windows and macOS and now brand new in the 2024 version with integrated duplicate finder!

Language & version

Supported languages
German, English, French, Italian and Spanish
Current version

4.1.1

Minimum system requirements

Processor
Multicore processor with 64-bit and AVX support Older AMD processors like AMD Phenom(tm) II X6 1100T and AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Lightroom (Classic)
Version 6 (or newer)
Memory
8GB RAM. However, for large catalogs (> 100,000 photos) we recommend 16GB or more
Hard disk
375 MB of free hard disk space for the base installation and additional memory for image signatures. For example, an Adobe Lightroom catalog of 100,000 images requires about another 800 MB of additional memory.

Excire Search 2022 - Trial

Language & version

Supported languages
German, English, French, Italian and Spanish
Current version
3.1.1

Minimum system requirements

Processor
Multicore processor with 64-bit and AVX support Older AMD processors like AMD Phenom(tm) II X6 1100T and AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Memory
8GB RAM. However, for large catalogs (> 100,000 photos) we recommend 16GB or more
Hard disk
375 MB of free hard disk space for the base installation and additional memory for image signatures. For example, an Adobe Lightroom catalog of 100,000 images requires about another 800 MB of additional memory.

Excire Foto 2024 - Trial

Note for existing Excire Foto customers: Excire Foto users have to keep in mind for testing that the previous Excire database will be modified when the program is started for the first time. Thus a switch back to older versions is not possible without a backup. We therefore recommend creating a backup before using Excire Foto 2024. How to do this is described here.

Language & version

Supported languages
German & English
Current version

3.2.0

Minimum system requirements

Processor
Multi-core processor with 64-bit and AVX support Older AMD Prozessoren like AMD Phenom(tm) II X6 1100T und AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Memory
Minimum 8GB RAM is required. However, 16GB or more is recommended.
Hard disk
The Excire Foto databases will take up approx. 250MB for 100,000 photos, and the previews approx. 25GB if highest-quality previews are generated for each photo.

Excire Search 2022

Excire Search is the perfect solution for all Adobe Lightroom Classic users. The smart Lightroom plugin analyzes and tags photos automatically and extends Lightroom with powerful AI search functions. With just a few clicks, Excire Search finds exactly the photos you are looking for. This makes image management fun again and hours of image searching a thing of the past. 

Available for Windows and macOS and now brand new in the 2022 version with integrated duplicate finder!

Language & version

Supported languages
German, English, French, Italian and Spanish
Current version
3.1.1

Minimum system requirements

Processor
Multicore processor with 64-bit and AVX support Older AMD processors like AMD Phenom(tm) II X6 1100T and AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Lightroom (Classic)
Version 6 (or newer)
Memory
8GB RAM. However, for large catalogs (> 100,000 photos) we recommend 16GB or more
Hard disk
375 MB of free hard disk space for the base installation and additional memory for image signatures. For example, an Adobe Lightroom catalog of 100,000 images requires about another 800 MB of additional memory.

Excire Foto 2024

Excire’s flagship program boasts dazzling new features and enhanced AI technology. All-new tools offer AI-powered free-text search, GPS-search, and intelligent aesthetics assessment of individual photos. Additionally, AI upgrades ensure better results in facial recognition, similarity search, and automatic keywording.

Excire Foto 2024 retains all core features from Excire Foto 2022, and the Excire Analytics extension is now fully integrated into the new program.

Highlights of the 2024 version include:

  • X-prompt AI for powerful free-text image search
  • X-tetics AI for instant evaluation of photos
  • GPS-based search and editable GPS coordinates
  • Intuitive slideshow maker for professional photo displays
  • New status labels for folders and collections
  • Improved AI-search performance thanks to revamped AI models

Excire Account Management and Activation

Language & version

Supported languages
German & English
Current version

3.2.0

Minimum system requirements

Processor
Multi-core processor with 64-bit and AVX support Older AMD Prozessoren like AMD Phenom(tm) II X6 1100T und AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Memory
Minimum 8GB RAM is required. However, 16GB or more is recommended.
Hard disk
The Excire Foto databases will take up approx. 250MB for 100,000 photos, and the previews approx. 25GB if highest-quality previews are generated for each photo.

Excire Foto 2022

Excire Foto 2022 is a powerful and innovative software designed for easy photo management and quick content-based browsing. Numerous smart features help you get organized and find the photos you are looking for.

These are the highlights of the new 2022 version:

  • Duplicate finder with numerous setting options
  • Support of PSD files
  • match accuracy for similarity searches is now adjustable
  • the maximum number of search results has been increased to 50,000
  • Support of Windows network paths


We recommend Windows users to install the Microsoft Raw image extension: Download

Language & version

Supported languages
German & English
Current version

2.2.4

Minimum system requirements

Processor
Multi-core processor with 64-bit and AVX support Older AMD Prozessoren like AMD Phenom(tm) II X6 1100T und AMD Phenom(tm) II X (also known as AMD Athlon II X4 640) are not supported. Intel Core 2 Duo processors are not supported.
Operating system
macOS 10.14 (or newer) or Windows 10 (64-bit) or Windows 11 (64bit)
Memory
Minimum 8GB RAM is required. However, 16GB or more is recommended.
Hard disk
The Excire Foto databases will take up approx. 250MB for 100,000 photos, and the previews approx. 25GB if highest-quality previews are generated for each photo.