Researchers from the Beijing Institute of Technology (BIT) have unveiled a groundbreaking method for transforming images captured in the near-infrared (NIR) spectrum into visible RGB images, marking a significant advancement in the field of imaging technology. The study, titled “Grayscale-Assisted RGB Image Conversion from Near-Infrared Images,” was recently published in the esteemed journal Tsinghua Science and Technology. The innovative process addresses the common challenges associated with NIR images, which often exhibit poor luminance and lack vibrant color details, thereby limiting their practical applications in various fields.
NIR imaging has gained traction in recent years due to its unparalleled advantages such as atmospheric penetration and resilience to interference, which are especially valuable in sectors like assisted driving and surveillance systems. As articulated by Professor Ying Fu, a prominent researcher at BIT and the corresponding author of the study, the inherent drawbacks of NIR images—particularly their lack of brightness and color richness—have hindered their full potential. Thus, the innovative approach proposed by the BIT research team is even more vital, as it breaks down the complex conversion into two distinct and manageable phases, effectively tackling the core limitations faced by conventional methods.
The initial phase of this conversion method involves transforming the NIR images into grayscale formats. This step is pivotal because it significantly simplifies the luminance restoration process, which is often cumbersome when dealing with the inherent deficiencies of NIR images. By adopting a grayscale intermediary, researchers can focus on accurately restoring the brightness in a controlled environment before reintroducing color in the subsequent phase of the process.
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Following the successful grayscale conversion, the next phase utilizes extensive datasets, including the renowned ImageNet, to facilitate the colorization process. This phase is where the intricate finesse of the method comes into play, as it attempts to accurately restore the chrominance that is lackluster in the original NIR images. The research team further refined this method by integrating Frequency Domain Learning (FDL). FDL employs Fast Fourier Convolution to not only enhance image details and textures but also to preserve and recover essential edges within the image. The attention to detail in this phase is crucial for producing images that not only are visually appealing but also retain the necessary spatial integrity crucial for practical applications.
The results stemming from the extensive testing conducted on established datasets like ICVL and TokyoTech have illustrated the superiority of this new method over earlier approaches employing direct NIR-to-RGB conversions. The experimental outcomes show a notable increase in Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity Index (SSIM), coupled with a marked reduction in color discrepancies, quantified through the Delta-E metric. Such validation speaks volumes about the method’s efficacy in delivering enhanced RGB images that can meet professional standards.
Furthermore, the implications of this research extend beyond academic significance; it holds practical value for various industries reliant on NIR imaging technologies, such as automotive systems for assisted driving and security surveillance systems. The improved clarity and color accuracy enabled by this grayscale-assisted method can substantially enhance image interpretation and decision-making processes, an advancement that could be crucial for the reliability of automated systems in real-world applications.
In the realm of technology, it is not uncommon for innovations to evolve into practical solutions that make dramatic improvements in how we visualize and interact with the world around us. The team behind this research is not resting on its laurels; plans are already underway to further refine their methodology. Future advancements will focus on introducing domain adaptation techniques, enhancing the compatibility between NIR and grayscale images even more effectively. The goal is to enable this technology to cater to a broader range of sophisticated imaging systems and real-life scenarios, thereby expanding its practical applications.
Robust funding from institutions like the National Natural Science Foundation of China has provided crucial support for this pioneering research, signaling a commitment to advancing imaging technology through scientific inquiry. The collaborative spirit of the research team is underscored by their diverse academic backgrounds, each bringing unique insights and expertise that culminate in the innovative developments associated with this method of image conversion.
As one delves deeper into the specifics of this research, it becomes evident that the process of converting NIR images to RGB is a multifaceted undertaking that combines elements of machine learning, image processing, and computational science. This multidisciplinary approach is indicative of where the future of imaging technology is headed—one where collaboration across various scientific domains will yield more significant breakthroughs and solve complex real-world challenges.
The BIT research team’s method signifies not just an improvement in image quality but represents a paradigm shift in how we think about imaging. By addressing the inherent limitations of NIR images and transforming them into a more usable and visually striking format, this research promises to propel advancements in fields that increasingly rely on high-quality imaging. The auto industry, security agencies, and even medical facilities stand to benefit significantly from such technology, paving the way for future innovations.
Ultimately, the drive to enhance imaging technology is more than just a scientific endeavor; it fuels a larger narrative about our ability to harness and manipulate light to create clearer, more informative representations of the world around us. By enabling clearer visualization of NIR data, the BIT team has not only laid the groundwork for future research but has also set a precedent for how innovative problem-solving can lead to practical solutions with far-reaching implications across various fields.
The researchers’ commitment to refining this method and exploring its applications in more advanced imaging systems highlights the ever-evolving nature of technology and science. As they continue to push the boundaries of what is possible, we are reminded of the transformative power of dedication, curiosity, and interdisciplinary collaboration that drive scientific progress.
The possibilities are endless, as the research not only enriches the domain of image processing but also serves as a foundation for exploring future innovations. The work elucidates how blending novel methodologies with established scientific practices can birth revolutionary outcomes that redefine our current understanding and practices—a true testament to the spirit of scientific inquiry.
With the continued evolution of this imaging technology on the horizon, one can only anticipate the myriad of ways this newfound capability will reshape industries and enhance our visual experience.
Subject of Research: Near-Infrared to RGB Image Conversion
Article Title: Grayscale-Assisted RGB Image Conversion from Near-Infrared Images
News Publication Date: 29-Apr-2025
Web References: https://ying-fu.github.io/
References: [1] Y. Gao, Q. Liu, L. Gu and Y. Fu, “Grayscale-Assisted RGB Image Conversion from Near-Infrared Images,” in Tsinghua Science and Technology, vol. 30, no. 5, pp. 2215-2226, October 2025, doi: 10.26599/TST.2024.9010115.
Image Credits: N/A
Keywords
Near-Infrared Imaging, RGB Conversion, Grayscale, Image Processing, Frequency Domain Learning, Visibility Enhancement, NIR Applications, Color Restoration, Image Quality Improvement, Computational Imaging.
Tags: Assisted driving imaging technologiesAtmospheric penetration imagingBIT research on NIR imagesChallenges in NIR imagingEnhanced color details in NIRGrayscale-assisted RGB transformationImaging technology advancementsInnovative image processing methodsNear-infrared imaging conversionRGB visualization techniquesSurveillance systems using NIRTsinghua Science and Technology journal publication