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2018
14
(3)
n
x0
1 1
x0
(t,x) = (1, -1), (2, 1), (4, 4
x =
t2
4
+ x0
n t=1,t=3,t=4
t=2
¨t=1 t=3 t=4
n
¨ t=1 t=4
t=3
¨
2
1
1 1
,
i
iN
i i
N
i ii
wav w
w
xw
x
s
==
å
å
=
=
Nixx ii ,,1 !=±= s
x =
t2
4
+ x0
x0 = x −
t2
4σx
2
=1, σt
2
=1
∂x0
∂x
=1,
∂x0
∂t
= −t / 2
∴σx0
2
=
∂x0
∂x
$
%
&
'
(
)
2
σx
2
+
∂x0
∂t
$
%
&
'
(
)
2
σt
2
=1+t2
/ 4
x0 t
→
(t,x) = (1, -1), (2, 1), (4, 4)
ˆx0
(1)
= −1−12
/ 4 = −5 / 4, σx0
2(1)
= 5 / 4
ˆx0
(2)
=1− 22
/ 4 = 0, σx0
2(2)
= 2
ˆx0
(1:2)
= ((−5 / 4) / (5 / 4)+ 0 / 2) / (4 / 5+1/ 2) = −10 /13 σx0
2(1:2)
=10 /13
ˆx0
(4)
= 4− 42
/ 4 = 0,σx0
2(4)
= 5
ˆx0
(1,2,4)
= (−10 /13/ (10 /13)+ 0 / 5) / (13/10 +1/ 5) = −2 / 3= −0.67(= −0.7)
σx0
2(1,2,4)
=10 /15 = 0.67(= 0.7)
t=1 x=-1
t=2 x=1
t=4 x=4
σx0
2
=1+t2
/ 4
x0
(1,2,4) = -0.7 0.8
n t=3
¨ t=1,2,4
¨ t=2,4 t=1
→
n t=3 x3
¨
x3 =
32
4
+ ˆx0
(1,2,4)
∂x3
∂ˆx(1,2,4)
0
=1
x =
t2
4
+ x0
x3 =
9
4
+ x0 ∴x0 = x3 −
9
4
∴x3 = x −
t2
4
+
9
4
2
n
¨
!"($)
&'(())
*
¨
!"(+:$-+)
&'((.:)/.)
*
n
¨
n
¨
¨
n
¨
n
n x,y
σx
2
σxy
σxy σy
2
!
"
#
#
$
%
&
&
(x,y)
(determinant)
σx
2
σxy
σxy σy
2
=σx
2
σy
2
−σxy
2
≥ 0
Schwarz
(
!"
#
"$
%$ & = 0:
)
*
"+,- = ."+ + 0+
1
!"
%
& &
&
x2
x1
n
!"#$ = &"!" + ("
(" 0, *+,
-
&" *+,
-
k
E[!0] = !0
V !0 = *34
-
k k+1
n
k-1 !"#$% &'()*
+
k ,"# -'(
+
,"# = /#$% !"#$%
-'(
+
= /#$%
+
&'()*
+
+ &1()*
+
"# 2# ,"# 2#
n
!" = $"%" + '"
'" 0, )*+
,
$" )*+
,
k
-%" = ."!" + /"
V -%" =E -%" − %"
,
= )3+
,
." /"
n
!"# = %#&# + (#
V !"# =E !"# − "#
,
= -./
,
E[1#] = 0 →
V[1#]→ min →
1# = !"# − "#
!"# = %#&# + (#
V !"# =E !"# − "#
,
= -./
,
E[1#] = 3[!"# − "#] = 0
3[!"# − "#] = 3[%#&# + (# − "#]
= 3 %#5#"# + %#6# + (# − "#
= %#5# − 1 3 "# + 0 + (#
= %#5# − 1 8"# + (# = 0
(# = 1 − %#5# 8"#
&# = 5#"# + 6#
!"# = %#&# + (#
V !"# =E !"# − "#
,
= -./
,
V[1#]→ min
V 1# = 3[(1# − 3 1# ),
]
= 3 ( %#6# − 1 "# + %#8# + (# − %#6# − 1 9"# − (#),
= 3 ( %#6# − 1 ("#−9"#) + %#8#),
= %#6# − 1 ,
: "# + %#
,
-;/
,
= %#6# − 1 ,
<./
,
+ %#
,
-;/
,
2 "# 8# 1# "#
!"# = %#&# + (#
V !"# =E !"# − "#
,
= -./
,
V[1#]→ min
V 1# = %#3# − 1 ,
5./
,
+ %#
,
-6/
,
7V 1#
7%#
= 23# %#3# − 1 5./
,
+ 2%#-6/
,
= 0
%# =
3#5./
,
3#
,
5./
,
+ -6/
,
, (# = 1 −
3#
,
5./
,
3#
,
5./
,
+ -6/
,
;"#
!"# = %#&# + (#
V !"# =E !"# − "#
,
= -./
,
%# =
0#1./
,
0#
,
1./
,
+ -2/
,
, (# = 1 −
0#
,
1./
,
0#
,
1./
,
+ -2/
,
5"#
!"# =
0#1./
,
&# + -2/
,
5"#
0#
,
1./
,
+ -2/
,
=
0#
,
-2/
,
&#
0#
+
1
1./
, 5"#
0#
,
-2/
, +
1
1./
,
6/
7/
5"#
&# = 0#"# + 8#
9["#] = &#/0#
= "# =
= &#
0#
, =
-2/
,
0#
,
!"# = %#&# + (#
V !"# =E !"# − "#
,
= -./
,
!"# =
0#1./
,
&# + -2/
,
3"#
0#
,
1./
,
+ -2/
,
=
0#
,
-2/
,
&#
0#
+
1
1./
, 3"#
0#
,
-2/
, +
1
1./
,
5 !"# = -!./
,
=
6 !"#
6&#
,
-2/
,
+
6 !"#
6 3"#
,
1./
,
= 1/
0#
,
-2/
,
+
1
1./
,
:
n : "# , $%&
'
n (") = +),- ."),-, 0%1
'
= +),-
'
$%123
'
+ $5123
'
n
¨ .") =
61781
9 :1;<=1
9 (%1
61
9
781
9 ;<=1
9 =
>1
9
?=1
9
@1
>1
;
3
A81
9 (%1
>1
9
?=1
9 ;
3
A81
9
¨$%1
'
=
B .%1
B:1
'
$C1
'
+
B .%1
B (%1
'
0%1
'
= 1/
61
9
<=1
9 +
-
781
9
2
n
n !=($%, $')
)[!] 2 2 +
n → +,%
2
!"#$ = &"!" + ("
(" ), *"
E[!-] = !-
V !- = 0-
!-2
1
0-2
2
!"#$2
1
&"2
2
*"2
2
!"2
1
= + ("2
1
2
!"#$ = &"!" + ("
(" ), *"
+!" = &",$-!",$
." = &",$/",$&",$
0
+ *",$
&",$2
2
*",$2
2
= +."2
2
&",$
0
2
2
/",$2
2
!" = $"%" + '"
'" 0, )*+
,
-%" = ."!" + /"
V -%" =E -%" − %"
,
= 3"
2
4"1
1
$"1
2
%"
2
1
= + '"1
1
4"1
1
."
1
2
= +
-%"2
1
/"
1
2
2
E[#$] = '[()$ − )$] = 0
'[()$ − )$] = '[,$-$ + /$ − )$]
= ' ,$0$)$ + ,$1$ + /$ − )$
= ,$0$ − 1 3)$ + /$ = 0
/$ = 4 − ,$0$ 3)$
()$ = ,$-$ + /$
V ()$ =E ()$ − )$
6
= 7$
0$1
2
,$
1
2/$
1
2 3)$2
1
4
2
2=
-
-[ ]
V[#$]
V #$ = '[(#$ − ' #$ )(#$ − ' #$ )+
]
= (,$-$ − 1)/$ ,$-$ − 1 +
+ ,$123
4
,$
+
2
56$ = ,$7$ + 8$
V 56$ =E 56$ − 6$
4
= :$
-$
,$ ;[ ] /$ -$
<
,$
T
;[ ]
+ ,$
,$
T123
4
V #$2
2
=
V[#$]
V #$ = '[(#$ − ' #$ )(#$ − ' #$ )+
]
= ,$-$ − 1 /$ ,$-$ − 1 +
+ ,$123
4
,$
+
= ,$ − 5$ -$/$-$
+
+ 123
4
,$ − 5$
+
+ 6$
5$= /$-$
+
-$/$-$
+
+ 123
4 78
6$ = (9 − 5$-$)/$
,$ = 5$ ( ) 6$
2
:;$ = ,$<$ + =$
V :;$ =E :;$ − ;$
4
= ?$
!"= $"%"
&
%"$"%"
&
+ ()*
+ ,-
." = (0 − !"%")$"
= $" − $"%"
&
%"$"%"
&
+ ()*
+ ,-
%"$"
." = ($"
,-
+ %"
&
()*
,+
%"),-
(= 3")
2
45" = !"6" + 7"
V 45" =E 45" − 5"
+
= 3"
!"# = %#
&'
+ )#
*
+,-
&.
)#
&'
%#
&'
/"# + )#
*
+,-
&.
0#
1# = (%#
&'
+ )#
*
+,-
&.
)#)&'
0# = )#"#(+4#: ) 0# )#
*
+,-
&.
)#
2
!"# = 6#0# + 7#
V !"# =E !"# − "#
.
= 1#
!"# %#
&'
)#
)#
;
+,-
.
/"# )#
;
+,-
&.
<#
)#
)#
;
+,-
&.
1#
%#
&'
%#
&'
1-40
! =
cos 20° −sin 20°
sin 20° cos 20°
, = 1 0
1-10
! =
cos 20° − sin 20°
sin 20° cos 20°
, = 1 0
x y
10-20
! =
cos 20° − sin 20°
sin 20° cos 20°
, = 1 0
20-30
! =
cos 20° −sin 20°
sin 20° cos 20°
, = 1 0
30-40
! =
cos 20° − sin 20°
sin 20° cos 20°
, = 1 0
y
y
! =
cos 20° − sin 20°
sin 20° cos 20°
, = 1 1
. = /0 + /2

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カルマンフィルタ講義資料

  • 2. (3)
  • 3. n x0 1 1 x0 (t,x) = (1, -1), (2, 1), (4, 4 x = t2 4 + x0
  • 4. n t=1,t=3,t=4 t=2 ¨t=1 t=3 t=4 n ¨ t=1 t=4 t=3 ¨
  • 5. 2 1 1 1 , i iN i i N i ii wav w w xw x s == å å = = Nixx ii ,,1 !=±= s
  • 6. x = t2 4 + x0 x0 = x − t2 4σx 2 =1, σt 2 =1 ∂x0 ∂x =1, ∂x0 ∂t = −t / 2 ∴σx0 2 = ∂x0 ∂x $ % & ' ( ) 2 σx 2 + ∂x0 ∂t $ % & ' ( ) 2 σt 2 =1+t2 / 4 x0 t →
  • 7. (t,x) = (1, -1), (2, 1), (4, 4) ˆx0 (1) = −1−12 / 4 = −5 / 4, σx0 2(1) = 5 / 4 ˆx0 (2) =1− 22 / 4 = 0, σx0 2(2) = 2 ˆx0 (1:2) = ((−5 / 4) / (5 / 4)+ 0 / 2) / (4 / 5+1/ 2) = −10 /13 σx0 2(1:2) =10 /13 ˆx0 (4) = 4− 42 / 4 = 0,σx0 2(4) = 5 ˆx0 (1,2,4) = (−10 /13/ (10 /13)+ 0 / 5) / (13/10 +1/ 5) = −2 / 3= −0.67(= −0.7) σx0 2(1,2,4) =10 /15 = 0.67(= 0.7) t=1 x=-1 t=2 x=1 t=4 x=4 σx0 2 =1+t2 / 4 x0 (1,2,4) = -0.7 0.8
  • 8. n t=3 ¨ t=1,2,4 ¨ t=2,4 t=1 → n t=3 x3 ¨ x3 = 32 4 + ˆx0 (1,2,4) ∂x3 ∂ˆx(1,2,4) 0 =1 x = t2 4 + x0 x3 = 9 4 + x0 ∴x0 = x3 − 9 4 ∴x3 = x − t2 4 + 9 4 2
  • 12. !" # "$ %$ & = 0: ) * "+,- = ."+ + 0+ 1 !" % & & &
  • 13. x2 x1
  • 14. n !"#$ = &"!" + (" (" 0, *+, - &" *+, - k E[!0] = !0 V !0 = *34 - k k+1
  • 15. n k-1 !"#$% &'()* + k ,"# -'( + ,"# = /#$% !"#$% -'( + = /#$% + &'()* + + &1()* + "# 2# ,"# 2#
  • 16. n !" = $"%" + '" '" 0, )*+ , $" )*+ , k -%" = ."!" + /" V -%" =E -%" − %" , = )3+ , ." /"
  • 17. n !"# = %#&# + (# V !"# =E !"# − "# , = -./ , E[1#] = 0 → V[1#]→ min → 1# = !"# − "#
  • 18. !"# = %#&# + (# V !"# =E !"# − "# , = -./ , E[1#] = 3[!"# − "#] = 0 3[!"# − "#] = 3[%#&# + (# − "#] = 3 %#5#"# + %#6# + (# − "# = %#5# − 1 3 "# + 0 + (# = %#5# − 1 8"# + (# = 0 (# = 1 − %#5# 8"# &# = 5#"# + 6#
  • 19. !"# = %#&# + (# V !"# =E !"# − "# , = -./ , V[1#]→ min V 1# = 3[(1# − 3 1# ), ] = 3 ( %#6# − 1 "# + %#8# + (# − %#6# − 1 9"# − (#), = 3 ( %#6# − 1 ("#−9"#) + %#8#), = %#6# − 1 , : "# + %# , -;/ , = %#6# − 1 , <./ , + %# , -;/ , 2 "# 8# 1# "#
  • 20. !"# = %#&# + (# V !"# =E !"# − "# , = -./ , V[1#]→ min V 1# = %#3# − 1 , 5./ , + %# , -6/ , 7V 1# 7%# = 23# %#3# − 1 5./ , + 2%#-6/ , = 0 %# = 3#5./ , 3# , 5./ , + -6/ , , (# = 1 − 3# , 5./ , 3# , 5./ , + -6/ , ;"#
  • 21. !"# = %#&# + (# V !"# =E !"# − "# , = -./ , %# = 0#1./ , 0# , 1./ , + -2/ , , (# = 1 − 0# , 1./ , 0# , 1./ , + -2/ , 5"# !"# = 0#1./ , &# + -2/ , 5"# 0# , 1./ , + -2/ , = 0# , -2/ , &# 0# + 1 1./ , 5"# 0# , -2/ , + 1 1./ , 6/ 7/ 5"# &# = 0#"# + 8# 9["#] = &#/0# = "# = = &# 0# , = -2/ , 0# ,
  • 22. !"# = %#&# + (# V !"# =E !"# − "# , = -./ , !"# = 0#1./ , &# + -2/ , 3"# 0# , 1./ , + -2/ , = 0# , -2/ , &# 0# + 1 1./ , 3"# 0# , -2/ , + 1 1./ , 5 !"# = -!./ , = 6 !"# 6&# , -2/ , + 6 !"# 6 3"# , 1./ , = 1/ 0# , -2/ , + 1 1./ ,
  • 23. : n : "# , $%& ' n (") = +),- ."),-, 0%1 ' = +),- ' $%123 ' + $5123 ' n ¨ .") = 61781 9 :1;<=1 9 (%1 61 9 781 9 ;<=1 9 = >1 9 ?=1 9 @1 >1 ; 3 A81 9 (%1 >1 9 ?=1 9 ; 3 A81 9 ¨$%1 ' = B .%1 B:1 ' $C1 ' + B .%1 B (%1 ' 0%1 ' = 1/ 61 9 <=1 9 + - 781 9
  • 24. 2 n n !=($%, $') )[!] 2 2 + n → +,%
  • 25. 2 !"#$ = &"!" + (" (" ), *" E[!-] = !- V !- = 0- !-2 1 0-2 2 !"#$2 1 &"2 2 *"2 2 !"2 1 = + ("2 1
  • 26. 2 !"#$ = &"!" + (" (" ), *" +!" = &",$-!",$ ." = &",$/",$&",$ 0 + *",$ &",$2 2 *",$2 2 = +."2 2 &",$ 0 2 2 /",$2 2
  • 27. !" = $"%" + '" '" 0, )*+ , -%" = ."!" + /" V -%" =E -%" − %" , = 3" 2 4"1 1 $"1 2 %" 2 1 = + '"1 1 4"1 1 ." 1 2 = + -%"2 1 /" 1 2
  • 28. 2 E[#$] = '[()$ − )$] = 0 '[()$ − )$] = '[,$-$ + /$ − )$] = ' ,$0$)$ + ,$1$ + /$ − )$ = ,$0$ − 1 3)$ + /$ = 0 /$ = 4 − ,$0$ 3)$ ()$ = ,$-$ + /$ V ()$ =E ()$ − )$ 6 = 7$ 0$1 2 ,$ 1 2/$ 1 2 3)$2 1 4 2 2= - -[ ]
  • 29. V[#$] V #$ = '[(#$ − ' #$ )(#$ − ' #$ )+ ] = (,$-$ − 1)/$ ,$-$ − 1 + + ,$123 4 ,$ + 2 56$ = ,$7$ + 8$ V 56$ =E 56$ − 6$ 4 = :$ -$ ,$ ;[ ] /$ -$ < ,$ T ;[ ] + ,$ ,$ T123 4 V #$2 2 =
  • 30. V[#$] V #$ = '[(#$ − ' #$ )(#$ − ' #$ )+ ] = ,$-$ − 1 /$ ,$-$ − 1 + + ,$123 4 ,$ + = ,$ − 5$ -$/$-$ + + 123 4 ,$ − 5$ + + 6$ 5$= /$-$ + -$/$-$ + + 123 4 78 6$ = (9 − 5$-$)/$ ,$ = 5$ ( ) 6$ 2 :;$ = ,$<$ + =$ V :;$ =E :;$ − ;$ 4 = ?$
  • 31. !"= $"%" & %"$"%" & + ()* + ,- ." = (0 − !"%")$" = $" − $"%" & %"$"%" & + ()* + ,- %"$" ." = ($" ,- + %" & ()* ,+ %"),- (= 3") 2 45" = !"6" + 7" V 45" =E 45" − 5" + = 3"
  • 32. !"# = %# &' + )# * +,- &. )# &' %# &' /"# + )# * +,- &. 0# 1# = (%# &' + )# * +,- &. )#)&' 0# = )#"#(+4#: ) 0# )# * +,- &. )# 2 !"# = 6#0# + 7# V !"# =E !"# − "# . = 1# !"# %# &' )# )# ; +,- . /"# )# ; +,- &. <# )# )# ; +,- &. 1# %# &' %# &'
  • 33. 1-40 ! = cos 20° −sin 20° sin 20° cos 20° , = 1 0
  • 34. 1-10 ! = cos 20° − sin 20° sin 20° cos 20° , = 1 0 x y
  • 35. 10-20 ! = cos 20° − sin 20° sin 20° cos 20° , = 1 0
  • 36. 20-30 ! = cos 20° −sin 20° sin 20° cos 20° , = 1 0
  • 37. 30-40 ! = cos 20° − sin 20° sin 20° cos 20° , = 1 0
  • 38. y y
  • 39. ! = cos 20° − sin 20° sin 20° cos 20° , = 1 1 . = /0 + /2