The World of WearableArt competition in Wellington for 2025 has once again showcased some of the most extravagant and fanciful costumes from around the world. With 85 finalists displaying their creations, this year’s event featured designs from 100 designers representing 17 countries, all vying for a prize pool exceeding $200,000 New Zealand dollars across 25 awards. The highlight of the competition was the presentation of the prestigious WOW Supreme Award to design duo Dawn Mostow and Ben Gould.
Mostow and Gould, hailing from the United States, clinched their first win with their piece titled “Tsukumogami.” Drawing inspiration from Japanese folklore and craft traditions, the design pays homage to mythological tools believed to possess a spirit or kami. The visually striking costumes featured two figures draped in blue-and-white latex resembling classical vases, adorned with ikebana flower arrangements on their heads.
As the runner-up of the competition, Fifi Colston’s creation “Meine Erste Liebe,” meaning “my first love” in German, transformed the wearer into a majestic medusa. The elaborate ensemble included a captivating bodice, a sculptural headdress, and a bell-shaped skirt embellished with intricate jellyfish details.
The 2025 World of WearableArt Show, themed “RISE,” continues its performances at the TSB Arena in Wellington until October 5. Attendees can experience the spectacular display of creativity and craftsmanship, with an opportunity to explore an archive of past showpieces on the contest’s official website.
Among the other notable entries in this year’s competition were designs such as “Fractilians” by Evita Camilleri and Dan Draper from Australia, “Autumn King” by Catherine Anderton from New Zealand, “Stripy Mischief” by Vanshika Jain from the Indian Institute of Art and Design, “Drift” by Katherine Bertram from New Zealand, “Thaliora” by Abhishek Chauhan from India, “Ember” by Xuan Jiang, Yuxin Zhou, and Yuhan Lin from Donghua University in China, and “Ko Au Ko Harakeke, Ko Harakeke Ko Au” by Anna Hayes-Moeau from New Zealand.
The World of WearableArt competition not only celebrates the intersection of fashion and art but also serves as a platform for designers to push the boundaries of creativity and innovation. With each year bringing a new wave of awe-inspiring creations, the event continues to captivate audiences and inspire new generations of artists and designers. As we enter a new era of technological advancements, the field of artificial intelligence (AI) is rapidly evolving. From self-driving cars to smart personal assistants, AI is becoming an integral part of our daily lives. One of the most exciting developments in AI is the emergence of generative adversarial networks (GANs), a type of machine learning model that is revolutionizing the way we create and manipulate digital media.
GANs are a type of neural network that consists of two competing networks: a generator and a discriminator. The generator network is responsible for creating new data, such as images or text, while the discriminator network evaluates the generated data and determines whether it is real or fake. Through iterative training, the generator network learns to create increasingly realistic data, while the discriminator network becomes better at distinguishing between real and generated data.
One of the key benefits of GANs is their ability to generate highly realistic and diverse data. This has led to a wide range of applications in fields such as image and video generation, text-to-image synthesis, and style transfer. For example, researchers have used GANs to create photorealistic images of non-existent celebrities, generate high-quality deepfake videos, and even generate new artwork in the style of famous artists.
In addition to their creative applications, GANs are also being used in more practical settings. For instance, GANs have been used in medical imaging to generate synthetic images of rare medical conditions, which can be used to train machine learning models without the need for large amounts of real data. GANs have also been used in the fashion industry to generate new clothing designs and predict upcoming fashion trends.
Despite their many advantages, GANs also present certain challenges. One of the main issues with GANs is their tendency to generate biased or offensive content, especially when trained on large datasets that contain biased information. Additionally, GANs can be computationally expensive to train and require a significant amount of data to produce high-quality results.
Overall, GANs represent a groundbreaking technology with the potential to revolutionize the way we create and interact with digital media. As researchers continue to push the boundaries of AI and explore new applications for GANs, we can expect to see even more innovative and exciting developments in the field of artificial intelligence.