2002/02/18 20:25:00 20:25:45 Backprojection Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy 12-25 keV Contour =[1(blue),5(green),10,25,50,75(white)]%

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Presentation transcript:

2002/02/18 20:25:00 20:25:45 Backprojection Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 1-1

2002/02/18 20:25:00 20:25:45 CLEAN Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 1-2

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 1-3

2002/02/18 20:25:00 20:25:45 MEM SATO (Color) and Clean (Contour) Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[10,25,50,75(white)]% 1-4

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV, Expected count from Image (Red), Observed count (white) Number of Time bins GRID 5 Counts 1-5

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV, Expected count from Image (Red), Observed count (white) Number of Time bins GRID 6 Counts 1-6

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV, Expected count from Image (Red), Observed count (white) Number of Time bins GRID 7 Counts 1-7

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV, Expected count from Image (Red), Observed count (white) Number of Time bins GRID 8 Counts 1-8

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 5-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV, Expected count from Image (Red), Observed count (white) Number of Time bins GRID 9 Counts 1-9

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 2-1

2002/02/18 20:25:00 20:25:45 Backprojection Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 3-1

2002/02/18 20:25:00 20:25:45 Clean Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 3-2

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy keV Contour =[1(blue),5(green),10,25,50,75(white)]% 3-3

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy 6-12 keV Contour =[1(blue),5(green),10,25,50,75(white)]% 4-1

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy 6-12 keV Expected count from Image (Red), Observed count (white) GRID 6 Counts Number of Time bins 4-2

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy 6-12 keV Expected count from Image (Red), Observed count (white) GRID 7 Counts Number of Time bins 4-3

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy 6-12 keV Expected count from Image (Red), Observed count (white) GRID 8 Counts Number of Time bins 4-4

2002/02/18 20:25:00 20:25:45 MEM SATO Grid 6-9, Pixel size [4.0,4.0], 64X64 Pixels Energy 6-12 keV Expected count from Image (Red), Observed count (white) GRID 9 Counts Number of Time bins 4-5