中文 [zh], pdf, 56.1MB
Girl Friend~元氣女友 🔍
幸喜, 2011
大元 🔍
“遠赴美國關島取景的大元第一本個人寫真書《Girl Friend~元氣女友》,由國際級時尚造型大師李佑群老師團隊重金打造最新形象。以與大元共度美麗浪漫的約會旅程、「我的完美女孩」為概念,讀者可在書中充分感受到第一人稱與大元的互動,可愛的大元就彷彿是你身邊最疼愛的女朋友。同時以一整日的約會作息為拍攝腳本,從清晨起床、為你做心愛的早餐、一起出門逛街、到泳池戲水、兜風、回家洗澡進入夢鄉,甚至陪伴她進入夢境看到大元化身為人魚公主、KITTY公主或是美麗的新娘等等,都可以在書中看到各種面貌的大元。既甜美青春又充滿陽光氣息,時而性感時而可愛,完全呈現全新亞洲國民女神的魅力。其中,大元還會在書中透露她的心情小語,首次公開成長過程的珍貴照片,並且介紹她的時尚穿搭風格,希望大家可以與大元一起分享她的大元氣!讓讀者每天早上都有滿滿的元氣迎接每一天。本書特色本書乃全台網路票選第一名正妹,大元充滿話題的首次個人寫真書,以強調大元就是「你身旁的完美女友」為概念,以寫真書為核心同時與影像、聲音、APP結合,全方位24小時讓大元圍繞著你,大元就彷彿隨身服侍在自己身旁,可以看、可以聽、可以碰觸,滿足喜愛大元的讀者徹底接近大元的心情,此外,大元最性感女人的一面也首次在書中公開。”
ISBN-13: 978-986-87667-0-9
ISBN-10: 986-87667-0-2
🚀 Fast downloads Become a member to support the long-term preservation of books, papers, and more. To show our gratitude for your support, you get fast downloads. ❤️
🚀 Fast downloads You have XXXXXX left today. Thanks for being a member! ❤️
🚀 Fast downloads You’ve run out of fast downloads for today. Please contact Anna at AnnaArchiv[email protected] if you’re interested in upgrading your membership.
🚀 Fast downloads You downloaded this file recently. Links remain valid for a while.
- - 選擇 #1: Fast Partner Server #1 (no browser verification required)
- - 選擇 #2: Fast Partner Server #2
🐢 Slow & external downloads
- - 選擇 #1: Slow Partner Server #1 (might require browser verification — unlimited downloads!)
- - 選擇 #2: Slow Partner Server #2
- - 選擇 #3: Slow Partner Server #3
- - 選擇 #4: Z-Library
- - 選擇 #5: Bulk torrent downloads (experts only)
- - Support authors: If you like this and can afford it, consider buying the original, or supporting the authors directly.
- - Support libraries: If this is available at your local library, consider borrowing it for free there.
所有鏡像都提供相同的文件,使用起來應該是安全的。 也就是說,下載文件時始終要小心。 例如,確保您的設備保持更新。
下面的文字僅以英文繼續
📂 File quality
Help out the community by reporting the quality of this file! 🙌
下面的文字僅以英文繼續
下面的文字僅以英文繼續
Total downloads:
A "file MD5" is a hash that gets computed from the file contents, and is reasonably unique based on that content. All shadow libraries that we have indexed on here primarily use MD5s to identify files.
A file might appear in multiple shadow libraries. For information about the various datasets that we have compiled, see the Datasets page.
For information about this particular file, check out its JSON file.