AI Innovates in Scent Design

Institute of Science Tokyo

Addressing the challenges of fragrance design, researchers at Institute of Science Tokyo (Science Tokyo) have developed an AI model that can automate the creation of new fragrances based on user-defined scent descriptors. The model uses mass spectrometry profiles of essential oils and corresponding odor descriptors to generate essential oil blends for new scents. This breakthrough is a game-changer for the fragrance industry, moving beyond trial-and-error, enabling rapid and scalable fragrance production.

Designing new fragrances is crucial in industries like perfumery, food, and home products, where scent significantly influences the overall experience of these products. However, traditional fragrance creation can be time-consuming and often depends on the skill and expertise of specialized perfumers. The process is typically challenging and labor-intensive, requiring numerous trial-and-error attempts to achieve the desired scent.

To automate this process, a research team, led by Professor Takamichi Nakamoto from Institute of Science Tokyo (Science Tokyo), developed an AI model called Odor Generative Diffusion (OGDiffusion). This model utilizes generative diffusion networks, a type of machine learning model that learns to create new content by reversing a noise process informed by existing data. These models are already widely employed to generate images and text, and the team has adapted this technology to create new fragrances. Their findings were published in IEEE Access on March 27, 2025.

The system operates by analyzing the chemical profiles (mass spectrometry data) of 166 essential oils, which are labeled with nine odor descriptors (such as "citrus" or "woody"). When users specify desired scent characteristics, AI generates a corresponding chemical profile (mass spectrum) that aligns with those descriptors. It then calculates the mix of essential oils needed to recreate that scent using a mathematical method called non-negative least squares.

"Our diffusion network uses patterns in mass spectrometry data of essential oils to generate new fragrance profiles in a fully automated, streamlined, and data-driven approach while maintaining high-quality data output. By eliminating human intervention and molecular synthesis from the process, we provide a fast, general, and efficient method for fragrance generation," explains Nakamoto.

While existing AI-based fragrance generation models, they have been developed, they rely on proprietary datasets and still require expert input. The primary advantage of the new method is its ability to automate the creation of new scents completely. Moreover, as the system produces fragrances based on essential oil recipes, the final scent can be easily recreated.

Further, the team conducted human sensory tests to evaluate whether the AI-generated fragrances align with the intended scent profiles. In a double-blind setup, 14 participants were tasked with matching AI-generated fragrances to appropriate descriptors (such as "citrusy" or "floral"). Participants were consistently able to identify the correct fragrance, demonstrating that the system could produce scents that met people's expectations. In another test, participants distinguished between two scents: one designed to express an additional specific odor descriptor and original scent without that descriptor. They reliably selected the scent that matched the target descriptor, indicating that the model generates clear and identifiable scent profiles.

Nakamoto's model—the first of its kind—heralds a future in which AI transforms scent design. "This approach represents a significant advancement in aroma design," states Nakamoto. Adding further, he says, "By automating the generation of mass spectra corresponding to desired odor profiles, the OGDiffusion network offers a more efficient and scalable method for fragrance creation. Moreover, even a novice can create an intended scent to make scented digital contents"

In summary, this innovative method allows for faster and more flexible scent design, with potential applications across various industries. By leveraging AI for scent generation, the OGDiffusion model demonstrates that computers can indeed possess a nose for creativity.


Nakamoto Lab

http://silvia.mn.ee.titech.ac.jp/html_en/index_en.html

About Institute of Science Tokyo (Science Tokyo)

Institute of Science Tokyo (Science Tokyo) was established on October 1, 2024, following the merger between Tokyo Medical and Dental University (TMDU) and Tokyo Institute of Technology (Tokyo Tech), with the mission of "Advancing science and human well-being to create value for and with society."

https://www.isct.ac.jp/en

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