Ditemukan 17779 dokumen yang sesuai dengan query
Australia: Griffith University,
070 RED
Majalah, Jurnal, Buletin Universitas Indonesia Library
Geneva: Cambridge University Press, {s.a}
340 IRRC
Majalah, Jurnal, Buletin Universitas Indonesia Library
Aveyard, Victoria
Jakarta: Mizan Pustaka, 2017
813 AVE r
Buku Teks Universitas Indonesia Library
Stein, Gunther
London : McGraw-Hill, 1945
951.05 STE c
Buku Teks Universitas Indonesia Library
Evans, Grant
London: Verso, 1984
959.704 4 EVA r
Buku Teks Universitas Indonesia Library
Hobbs, Lisa
New York: McGrow-Hill , 1966
915.1 HOB i
Buku Teks Universitas Indonesia Library
Eliade, Mircea, 1907-1986
Korea, Seoul: Kkachi, 2006
KOR 572.951 9 ELI s
Buku Teks Universitas Indonesia Library
"Buku ini bercerita ttg aliansi rambut merah, organisasi yang mencurigakan kelompok detektif ilmiah tales runner mengungkapkan rahasi itu!"
Jakarta: Elex Media Komputindo, 2013
741.5 ALI
Buku Teks SO Universitas Indonesia Library
Naveed Abbas
"Clustered Red Blood Cells are observed very frequently in the thin blood smear digital images. Separating clustered Red Blood Cells from the single Red Blood Cells and splitting of clustered Red Blood Cells into single Red Blood Cells is a challenging job in the computer-assisted diagnosis of blood for any disorder in many diseases like Complete Blood Count Test, Anemia, Leukemia and Malaria etc. The mentioned problems are highly laborious in manual microscopy for the hematologists. Many techniques currently existing for the solution suffer from both under- and over- splitting problems when highly complex clusters of Red Blood Cells occur. In addition, the existing techniques are not computationally efficient. In this paper, we address the aforementioned problems, firstly by considering the boundaries of the convex hulls of clustered Red Blood Cells and secondly, by splitting the boundaries according to the number of Red Blood Cells in relation to distance measures. Furthermore, we draw circles using a mid-point circle algorithm at each boundary cleavage to give an illusion of the Red Blood Cells. The test results of the proposed technique on a standard online dataset are presented in two ways. Statistically first of all by achieving an average recall of 0.964 and precision of 0.970 while their F-measure achieved is 0.962 as well as secondly through ground truth data with visual inspections."
Depok: Faculty of Engineering, Universitas Indonesia, 2017
UI-IJTECH 6:3 (2015)
Artikel Jurnal Universitas Indonesia Library
Orhan Pamuk
894.3 P 33 nx
Buku Teks Universitas Indonesia Library