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Apple showcases new AI research on smartphone photography

by Milan
December 20, 2025
Apple AI Research

Image: monsit / DepositPhotos.com

Apple is continuously working to improve the photo quality of iPhones through software. A recent study now shows how an AI-powered image signal processor could significantly enhance photos taken in extremely low light. The focus is on a new method that doesn't intervene after the fact, but is directly part of the camera's processing pipeline. The goal is to recover details from the sensor's raw data that were previously lost.

Low-light photography has always been a weakness of digital cameras, especially smartphones. Although sensors and lenses have improved, physical limitations remain. Apple is therefore increasingly focusing on computational photography. The research presented here demonstrates how modern AI models can be used to push these limits without changing the hardware.

The problem with extremely poor lighting conditions

In very dark scenes, very little light reaches the image sensor. This leads to significant noise, reduced detail, and washed-out colors. To compensate for this, manufacturers like Apple have relied on aggressive noise reduction and smoothing for years.

While these classic image processing algorithms reduce visible noise, they often produce unnaturally smooth images. Fine textures disappear, text becomes illegible, and surfaces appear painted. This is precisely where the new research comes in.

DarkDiff as a new approach

To overcome these weaknesses, researchers from Apple, together with Purdue University, developed a model called DarkDiff. It was presented in the study "DarkDiff: Advancing Low-Light Raw Enhancement by Retasking Diffusion Models for Camera ISP".

The core idea is to integrate a diffusion-based image model directly into the camera's image signal processor. Instead of applying AI to a finished photograph, DarkDiff works with very early image data. This allows the use of information that is normally lost in later processing steps.

Diffusion models instead of classical smoothing

Previous deep learning models for low-light photography are mostly regression-based. They minimize pixel defects, which delivers measurably good results, but often leads to excessive smoothing visually. Diffusion models take a different approach. They learn from very large image datasets how natural images are structured and can reconstruct missing details based on the overall context.

The researchers adapted a pre-trained generative diffusion model, similar to Stable Diffusion, to handle camera data. The model is not retrained from scratch, but rather repurposed for the task of RAW image enhancement.

Integration into the camera pipeline

The camera's ISP continues to handle the basic image processing steps. These include white balance and demosaicing to generate a linear RGB image from the sensor's raw data. This is where DarkDiff comes in.

The model removes noise, restores details, and directly generates the final sRGB image. A special attention mechanism ensures that local image areas are specifically analyzed. This preserves fine structures and reduces the risk of the AI distorting or completely reinventing content.

Control via classifier-free guidance

DarkDiff also uses a standard technique from diffusion research called classifier-free guidance. This allows control over how strongly the model is oriented towards the actual input image or its learned visual patterns.

With less guidance, smoother results with fewer details are produced. With more guidance, textures and fine structures are reconstructed more clearly. However, this also increases the risk of artifacts or unwanted hallucinations. Finding the right balance is crucial for a realistic result.

Tests under real-world conditions

For the evaluation, the researchers used real photographs taken in extremely poor lighting conditions. Cameras such as the Sony A7SII were among those used. The test images were taken at night with a very short exposure time of only 0.033 seconds.

The reference images were taken of the same scenes with a 300 times longer exposure time, using a tripod. These reference images show how the scene should actually look in sufficient light.

DarkDiff was compared to other RAW enhancement methods, including diffusion-based approaches like ExposureDiffusion. In several demanding benchmarks, DarkDiff achieved a higher perceived image quality. Details, colors, and contrasts were closer to the reference images than with previous methods.

Limitations and open issues

Despite its impressive results, DarkDiff has clear drawbacks. The calculations are significantly more complex than those of traditional image processing algorithms. Running it directly on a smartphone would require considerable processing power and quickly drain the battery. The researchers therefore believe that cloud-based processing would be more realistic.

Furthermore, weaknesses were observed in the recognition of non-English text in very dark scenes. It is also important to note that the study makes no statement about whether or when DarkDiff will be integrated into iPhones.

Apple's focus on software rather than new camera hardware

The study makes it clear that Apple continues to work intensively on new approaches to computational photography. The focus is on overcoming the physical limitations of camera hardware with intelligent software.

DarkDiff is not an announced product, but a research project. Nevertheless, it demonstrates the potential that AI could have for iPhone photos in the future, especially in extremely low light. For the smartphone market as a whole, this work underscores how important advanced image processing has become for standing out from the competition. (Image: monsit / DepositPhotos.com)

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