// Tencent is pleased to support the open source community by making ncnn available. // // Copyright (C) 2017 THL A29 Limited, a Tencent company. All rights reserved. // // Licensed under the BSD 3-Clause License (the "License"); you may not use this file except // in compliance with the License. You may obtain a copy of the License at // // https://opensource.org/licenses/BSD-3-Clause // // Unless required by applicable law or agreed to in writing, software distributed // under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR // CONDITIONS OF ANY KIND, either express or implied. See the License for the // specific language governing permissions and limitations under the License. static void convdw3x3s1_sse(const Mat& bottom_blob, Mat& top_blob, const Mat& _kernel, const Mat& _bias, const Option& opt) { int w = bottom_blob.w; int outw = top_blob.w; int outh = top_blob.h; const int group = bottom_blob.c; const float* kernel = _kernel; const float* bias = _bias; #pragma omp parallel for num_threads(opt.num_threads) for (int g = 0; g < group; g++) { Mat out = top_blob.channel(g); const float bias0 = bias ? bias[g] : 0.f; const float* kernel0 = kernel + g * 9; float* outptr = out; float* outptr2 = outptr + outw; const float* img0 = bottom_blob.channel(g); const float* r0 = img0; const float* r1 = img0 + w; const float* r2 = img0 + w * 2; const float* r3 = img0 + w * 3; const float* k0 = kernel0; const float* k1 = kernel0 + 3; const float* k2 = kernel0 + 6; int i = 0; for (; i + 1 < outh; i += 2) { int remain = outw; for (; remain > 0; remain--) { float sum = bias0; sum += r0[0] * k0[0]; sum += r0[1] * k0[1]; sum += r0[2] * k0[2]; sum += r1[0] * k1[0]; sum += r1[1] * k1[1]; sum += r1[2] * k1[2]; sum += r2[0] * k2[0]; sum += r2[1] * k2[1]; sum += r2[2] * k2[2]; float sum2 = bias0; sum2 += r1[0] * k0[0]; sum2 += r1[1] * k0[1]; sum2 += r1[2] * k0[2]; sum2 += r2[0] * k1[0]; sum2 += r2[1] * k1[1]; sum2 += r2[2] * k1[2]; sum2 += r3[0] * k2[0]; sum2 += r3[1] * k2[1]; sum2 += r3[2] * k2[2]; *outptr = sum; *outptr2 = sum2; r0++; r1++; r2++; r3++; outptr++; outptr2++; } r0 += 2 + w; r1 += 2 + w; r2 += 2 + w; r3 += 2 + w; outptr += outw; outptr2 += outw; } for (; i < outh; i++) { int remain = outw; for (; remain > 0; remain--) { float sum = bias0; sum += r0[0] * k0[0]; sum += r0[1] * k0[1]; sum += r0[2] * k0[2]; sum += r1[0] * k1[0]; sum += r1[1] * k1[1]; sum += r1[2] * k1[2]; sum += r2[0] * k2[0]; sum += r2[1] * k2[1]; sum += r2[2] * k2[2]; *outptr = sum; r0++; r1++; r2++; outptr++; } r0 += 2; r1 += 2; r2 += 2; } } } static void convdw3x3s2_sse(const Mat& bottom_blob, Mat& top_blob, const Mat& _kernel, const Mat& _bias, const Option& opt) { int w = bottom_blob.w; int outw = top_blob.w; int outh = top_blob.h; const int group = bottom_blob.c; const int tailstep = w - 2 * outw + w; const float* kernel = _kernel; const float* bias = _bias; #pragma omp parallel for num_threads(opt.num_threads) for (int g = 0; g < group; g++) { Mat out = top_blob.channel(g); const float bias0 = bias ? bias[g] : 0.f; const float* kernel0 = kernel + g * 9; float* outptr = out; const float* img0 = bottom_blob.channel(g); const float* r0 = img0; const float* r1 = img0 + w; const float* r2 = img0 + w * 2; const float* k0 = kernel0; const float* k1 = kernel0 + 3; const float* k2 = kernel0 + 6; int i = 0; for (; i < outh; i++) { int remain = outw; for (; remain > 0; remain--) { float sum = bias0; sum += r0[0] * k0[0]; sum += r0[1] * k0[1]; sum += r0[2] * k0[2]; sum += r1[0] * k1[0]; sum += r1[1] * k1[1]; sum += r1[2] * k1[2]; sum += r2[0] * k2[0]; sum += r2[1] * k2[1]; sum += r2[2] * k2[2]; *outptr = sum; r0 += 2; r1 += 2; r2 += 2; outptr++; } r0 += tailstep; r1 += tailstep; r2 += tailstep; } } }