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6dcff9a4
编写于
8月 25, 2017
作者:
H
hedaoyuan
浏览文件
操作
浏览文件
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电子邮件补丁
差异文件
Neon depthwise conv with filterSize = 3 and stride = 2.
上级
b7885b08
变更
1
显示空白变更内容
内联
并排
Showing
1 changed file
with
114 addition
and
1 deletion
+114
-1
paddle/function/neon/NeonDepthwiseConv.cpp
paddle/function/neon/NeonDepthwiseConv.cpp
+114
-1
未找到文件。
paddle/function/neon/NeonDepthwiseConv.cpp
浏览文件 @
6dcff9a4
...
...
@@ -153,6 +153,109 @@ struct DepthwiseConvKernel<3, 1> {
}
};
/**
* Each step calculates four elements of the output.
* First step:
* R0[0, 2, 4, 6...] * K[0][0]
* R0[1, 3, 5, 7...] * K[0][1]
* R0[2, 4, 6, 8...] * K[0][2]
* R1[0, 2, 4, 6...] * K[1][0]
* R1[1, 3, 5, 7...] * K[1][1]
* R1[2, 4, 6, 8...] * K[1][2]
* R2[0, 2, 4, 6...] * K[2][0]
* R2[1, 3, 5, 7...] * K[2][1]
* R2[2, 4, 6, 8...] * K[2][2]
* ------------------------------
* Output[0, 1, 2, 3]
*/
template
<
>
struct
DepthwiseConvKernel
<
3
,
2
>
{
static
void
run
(
const
float
*
inputData
,
const
float
*
filterData
,
int
inputHeight
,
int
inputWidth
,
int
outputChannels
,
int
outputHeight
,
int
outputWidth
,
int
filterMultiplier
,
float
*
outputData
)
{
const
int
steps
=
outputWidth
>>
2
;
const
int
remain
=
outputWidth
&
3
;
for
(
int
c
=
0
;
c
<
outputChannels
;
c
++
,
filterData
+=
9
)
{
// Load the filters
float32x4_t
k
[
3
];
k
[
0
]
=
vld1q_f32
(
filterData
);
k
[
1
]
=
vld1q_f32
(
filterData
+
3
);
k
[
2
]
=
vld1q_f32
(
filterData
+
6
);
k
[
0
]
=
vsetq_lane_f32
(
0.
f
,
k
[
0
],
3
);
k
[
1
]
=
vsetq_lane_f32
(
0.
f
,
k
[
1
],
3
);
k
[
2
]
=
vsetq_lane_f32
(
0.
f
,
k
[
2
],
3
);
const
float
*
start
=
inputData
+
(
c
/
filterMultiplier
)
*
(
inputHeight
*
inputWidth
);
float32x4_t
input
[
3
][
3
];
for
(
int
h
=
0
;
h
<
outputHeight
;
h
++
)
{
const
float
*
r0
=
start
+
2
*
h
*
inputWidth
;
const
float
*
r1
=
start
+
(
2
*
h
+
1
)
*
inputWidth
;
const
float
*
r2
=
start
+
(
2
*
h
+
2
)
*
inputWidth
;
for
(
int
s
=
0
;
s
<
steps
;
s
++
)
{
// Load the inputs
float32x4_t
data1
;
float32x4x2_t
data2
;
data2
=
vld2q_f32
(
r0
);
input
[
0
][
0
]
=
data2
.
val
[
0
];
input
[
0
][
1
]
=
data2
.
val
[
1
];
data1
=
vld1q_f32
(
r0
+
8
);
input
[
0
][
2
]
=
vextq_f32
(
data2
.
val
[
0
],
data1
,
1
);
data2
=
vld2q_f32
(
r1
);
input
[
1
][
0
]
=
data2
.
val
[
0
];
input
[
1
][
1
]
=
data2
.
val
[
1
];
data1
=
vld1q_f32
(
r1
+
8
);
input
[
1
][
2
]
=
vextq_f32
(
data2
.
val
[
0
],
data1
,
1
);
data2
=
vld2q_f32
(
r2
);
input
[
2
][
0
]
=
data2
.
val
[
0
];
input
[
2
][
1
]
=
data2
.
val
[
1
];
data1
=
vld1q_f32
(
r2
+
8
);
input
[
2
][
2
]
=
vextq_f32
(
data2
.
val
[
0
],
data1
,
1
);
float32x4_t
tmp1
=
vdupq_n_f32
(
0.
f
);
float32x4_t
tmp2
=
vdupq_n_f32
(
0.
f
);
tmp1
=
vmlaq_laneq_f32
(
tmp1
,
input
[
0
][
0
],
k
[
0
],
0
);
tmp2
=
vmlaq_laneq_f32
(
tmp2
,
input
[
0
][
1
],
k
[
0
],
1
);
tmp1
=
vmlaq_laneq_f32
(
tmp1
,
input
[
0
][
2
],
k
[
0
],
2
);
tmp2
=
vmlaq_laneq_f32
(
tmp2
,
input
[
1
][
0
],
k
[
1
],
0
);
tmp1
=
vmlaq_laneq_f32
(
tmp1
,
input
[
1
][
1
],
k
[
1
],
1
);
tmp2
=
vmlaq_laneq_f32
(
tmp2
,
input
[
1
][
2
],
k
[
1
],
2
);
tmp1
=
vmlaq_laneq_f32
(
tmp1
,
input
[
2
][
0
],
k
[
2
],
0
);
tmp2
=
vmlaq_laneq_f32
(
tmp2
,
input
[
2
][
1
],
k
[
2
],
1
);
tmp1
=
vmlaq_laneq_f32
(
tmp1
,
input
[
2
][
2
],
k
[
2
],
2
);
tmp1
=
vaddq_f32
(
tmp1
,
tmp2
);
vst1q_f32
(
outputData
,
tmp1
);
r0
+=
8
;
r1
+=
8
;
r2
+=
8
;
outputData
+=
4
;
}
for
(
int
r
=
0
;
r
<
remain
;
r
++
)
{
float32x4_t
i0
=
vld1q_f32
(
r0
);
float32x4_t
i1
=
vld1q_f32
(
r1
);
float32x4_t
i2
=
vld1q_f32
(
r2
);
*
outputData
=
conv3x3
(
i0
,
i1
,
i2
,
k
[
0
],
k
[
1
],
k
[
2
]);
r0
+=
2
;
r1
+=
2
;
r2
+=
2
;
outputData
++
;
}
}
}
}
};
/**
* Each step calculates four elements of the output.
*/
...
...
@@ -326,7 +429,7 @@ public:
}
for
(
size_t
i
=
0
;
i
<
batchSize
;
i
++
)
{
if
(
filterWidth
==
3
)
{
if
(
filterWidth
==
3
&&
strideH
()
==
1
)
{
DepthwiseConvKernel
<
3
,
1
>::
run
(
inputPadding
,
filterData
,
inputHeight
,
...
...
@@ -336,6 +439,16 @@ public:
outputWidth
,
filterMultiplier
,
outputData
);
}
else
if
(
filterWidth
==
3
&&
strideH
()
==
2
)
{
DepthwiseConvKernel
<
3
,
2
>::
run
(
inputPadding
,
filterData
,
inputHeight
,
inputWidth
,
outputChannels
,
outputHeight
,
outputWidth
,
filterMultiplier
,
outputData
);
}
else
if
(
filterWidth
==
4
)
{
DepthwiseConvKernel
<
4
,
1
>::
run
(
inputPadding
,
filterData
,
...
...
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