Belajar Pengolahan Citra Digital Teori Dan Contoh Kasus Nyata
Synopsis
SPESIFIKASI BUKU
Harga : Rp. 250.000
Ukuran : 18 x 25 cm
Jumlah Halaman : 453 Hal
Ketebalan : 2 cm
ISBN : On Proses
Deskripsi Buku : Buku ini hadir sebagai respons terhadap perkembangan pesat teknologi informasi, khususnya dalam bidang image processing yang kini menjadi pilar penting dalam revolusi industri 4.0, kecerdasan buatan (artificial intelligence), dan transformasi digital di berbagai sektor. Pengolahan citra digital telah menjadi bagian integral dalam kehidupan modern—mulai dari dunia medis, pertanian, manufaktur, hingga keamanan dan hiburan. Buku ini kami susun sebagai sumber pembelajaran yang menyeluruh, terstruktur, dan aplikatif, tidak hanya bagi mahasiswa dan dosen, tetapi juga bagi peneliti, praktisi industri, dan siapa pun yang tertarik mengembangkan solusi berbasis citra digital. Dengan pendekatan step-by-step yang disertai contoh kode program berbasis Python serta studi kasus nyata, buku ini berusaha menjembatani teori dan praktik. Kami menyadari bahwa memahami teori saja tidak cukup tanpa keterampilan implementasi. Oleh karena itu, pembaca akan menemukan kombinasi penjelasan teoritis yang kuat dan latihan praktikum yang dirancang untuk memperkuat pemahaman melalui eksperimen langsung. Struktur buku ini mencakup berbagai topik mulai dari pengantar dasar, transformasi spasial dan frekuensi, segmentasi, ekstraksi fitur, hingga pengenalan wajah dan penggunaan deep learning. Bab-bab disusun secara sistematis dan progresif, dimulai dari konsep dasar hingga aplikasi lanjutan. Setiap bab dilengkapi dengan tujuan pembelajaran, indikator pencapaian, penjelasan teknis, serta ilustrasi visual untuk memudahkan pemahaman. Penulisan buku ini juga memanfaatkan referensi dari berbagai sumber literatur akademik dan teknologi terbaru yang kredibel. Dalam menyusunnya, kami turut menggunakan pendekatan pembelajaran berbasis proyek dan menyelaraskannya 4 dengan kebutuhan kurikulum informatika dan teknik komputer masa kini.
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