@ngoc_anh332: Em rất thích khung cảnh này, có thể ngồi ngắm mưa dưới bóng đèn cả buổi tối cũng không biết chán.Vì có vẻ như tất cả những điều muộn phiền sẽ rơi xuống và trôi đi theo cơn mưa..Rồi sớm mai khi Bình Minh thức giấc,cây cối xanh tươi,bầu trời trong lành và em lại bắt đầu bằng một ngày mới thật vui vẻ hạnh phúc..#xuhuong #ilovetiktok

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Ngọc Anh(Dì út của tụinhỏ)
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Monday 15 September 2025 15:19:47 GMT
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