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Park Shin Hye Mixes Sporty Looks With Classic Pieces For F/W Viki

BY Adrienne Stanley | Sep 09, 2015 11:30 PM EDT


On September 10, the Korean clothier Viki released wallpaper-sized photos featuring Park Shin Hye for their 2015 Fall/Winter line. The photos, which were published on their Naver blog, depicted a pictorial of the actress that incorporated layered looks and winter outerwear. 

The styles are a mix of business casual and after hours pieces, while previously released photos focused on office-friendly trench coats. 

Park is visually arresting in a emblazed, quilted jacket that evokes 90's American grunge by incorporating an oversized plaid shirt and ominous black hat. 

The "Pinocchio" star is stunning in an outfit that pairs a grey overcoat with slim burgundy pants. She is equally breathtaking in photos which depict her in a puffy, winter coat paired with a knit sweater, cotton slacks and sneakers. 

2015 has marked an increase in promotional activities for Park Shin Hye, following the pan-Asian success of "Pinocchio." The actress recently appeared in the ensemble flick, "The Beauty Inside," and was a featured guest in four episodes of tvN's "Three Meals a Day."

Her appearance on the popular reality show garnered increased attention for the down-to-earth star. Her guest appearances on "Three Meals a Day" have amped up interest in her on-screen chemistry with 2PM's Taecyeon, who previously appeared in dramas including "Dream High."  

In addition to her acting experience, Park continues to build her endorsement opportunities, which include appearances for brands like Mind Bridge, Agatha, and Millet. 


About the writer: Adrienne Stanley is a contributing editor for KDramaStars. She is also a contributing writer for KpopStarz, MTV Iggy, Viki and CJ Entertainment's KCON blog. Her passions include a love of K-pop and Asian drama. When she is not writing, she is hanging out on Twitter (@retrogirladdy).

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