Android Wear Powered Smartwatches to Feature New Watch Faces from Nine Top Designer Brands

Android Wear-powered smartwatch users will definitely love the new downloadable watch faces from nine well-known designers.

Fashion is one of the top reasons why people wear smartwatches. Although there are thousands of watch faces available to be downloaded online, most users are still looking for something that will match their style, their outfit and, for some, their smartwatch brand.

If users have been looking to make their Android Wear smartwatch a bit more stylish, they may want to check out these nine new designer watch faces.

According to Android Central, here is the list of the nine iconic brands in this collection:

* Ted Baker: Reveal your sophisticated side with ten gorgeous designs.

* Melissa Joy Manning: Rock a different birthstone for every month of the year.

* Vivienne Tam: Tap Opera Girl to see her twirl, take a selfie, and more.

* Nicole Miller: Stay on track and in style with Nicole Miller's pop art.

* Y-3: Sport the styles of Yohji Yamamoto, inspired by the beauty of human movement.

* Mango: Add instant chic to any outfit with this ready-to-wear watch face.

* Zoe Jordan: Free your time of clutter with the clean lines of modern design.

* Harajuku Kawaii!: Express your playful side with this adorable and vibrant watch face.

* ASICS: Motivate yourself to stay active with the help of your fitness buddy.

    An article from Fone Arena said that the company has teamed up with these fashion brands to bring these new fashion designers themed watch faces. These are compatible with all current Android Wear devices, such as Tag Heuer Connected Watch, Fossil Q Founder, Moto 360, Huawei Watch, Asus Zenwatch, Sony Smartwatch 3, Samsung Gear Live, LG Watch Urbane and LG G Watch R.

    Android phone users may download these new watch faces from Google Play Store, while the designs will be available for iPhone users and can be downloaded from Android Wear App for iOS soon.

    Join the Discussion
    Real Time Analytics