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#include "core/general-server/op/tinypose_128x96.h" |
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#include "core/predictor/framework/infer.h" |
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#include "core/predictor/framework/memory.h" |
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#include "core/predictor/framework/resource.h" |
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#include "core/util/include/timer.h" |
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#include <algorithm> |
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#include <iostream> |
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#include <memory> |
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#include <sstream> |
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namespace baidu { |
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namespace paddle_serving { |
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namespace serving { |
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using baidu::paddle_serving::Timer; |
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using baidu::paddle_serving::predictor::InferManager; |
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using baidu::paddle_serving::predictor::MempoolWrapper; |
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using baidu::paddle_serving::predictor::PaddleGeneralModelConfig; |
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using baidu::paddle_serving::predictor::general_model::Request; |
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using baidu::paddle_serving::predictor::general_model::Response; |
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using baidu::paddle_serving::predictor::general_model::Tensor; |
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int tinypose_128x96::inference() { |
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VLOG(2) << "Going to run inference"; |
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const std::vector<std::string> pre_node_names = pre_names(); |
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if (pre_node_names.size() != 1) { |
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LOG(ERROR) << "This op(" << op_name() |
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<< ") can only have one predecessor op, but received " |
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<< pre_node_names.size(); |
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return -1; |
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} |
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const std::string pre_name = pre_node_names[0]; |
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const GeneralBlob *input_blob = get_depend_argument<GeneralBlob>(pre_name); |
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if (!input_blob) { |
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LOG(ERROR) << "input_blob is nullptr,error"; |
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return -1; |
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} |
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uint64_t log_id = input_blob->GetLogId(); |
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VLOG(2) << "(logid=" << log_id << ") Get precedent op name: " << pre_name; |
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GeneralBlob *output_blob = mutable_data<GeneralBlob>(); |
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if (!output_blob) { |
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LOG(ERROR) << "output_blob is nullptr,error"; |
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return -1; |
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} |
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output_blob->SetLogId(log_id); |
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if (!input_blob) { |
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LOG(ERROR) << "(logid=" << log_id |
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<< ") Failed mutable depended argument, op:" << pre_name; |
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return -1; |
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} |
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const TensorVector *in = &input_blob->tensor_vector; |
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TensorVector *out = &output_blob->tensor_vector; |
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int batch_size = input_blob->_batch_size; |
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output_blob->_batch_size = batch_size; |
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VLOG(2) << "(logid=" << log_id << ") infer batch size: " << batch_size; |
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Timer timeline; |
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int64_t start = timeline.TimeStampUS(); |
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timeline.Start(); |
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char *total_input_ptr = static_cast<char *>(in->at(0).data.data()); |
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std::string base64str = total_input_ptr; |
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cv::Mat img = Base2Mat(base64str); |
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cv::cvtColor(img, img, cv::COLOR_BGR2RGB); |
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std::vector<float> input(1 * 3 * im_shape_h * im_shape_w, 0.0f); |
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preprocess_det(img, input.data(), scale_factor_h, scale_factor_w, im_shape_h, |
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im_shape_w, mean_, scale_, is_scale_); |
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TensorVector *real_in = new TensorVector(); |
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if (!real_in) { |
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LOG(ERROR) << "real_in is nullptr,error"; |
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return -1; |
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} |
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int in_num = 0; |
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size_t databuf_size = 0; |
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void *databuf_data = NULL; |
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char *databuf_char = NULL; |
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in_num = 1 * 3 * im_shape_h * im_shape_w; |
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databuf_size = in_num * sizeof(float); |
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databuf_data = MempoolWrapper::instance().malloc(databuf_size); |
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if (!databuf_data) { |
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LOG(ERROR) << "Malloc failed, size: " << databuf_size; |
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return -1; |
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} |
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memcpy(databuf_data, input.data(), databuf_size); |
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databuf_char = reinterpret_cast<char *>(databuf_data); |
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paddle::PaddleBuf paddleBuf(databuf_char, databuf_size); |
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paddle::PaddleTensor tensor_in; |
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tensor_in.name = "image"; |
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tensor_in.dtype = paddle::PaddleDType::FLOAT32; |
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tensor_in.shape = {1, 3, im_shape_h, im_shape_w}; |
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tensor_in.lod = in->at(0).lod; |
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tensor_in.data = paddleBuf; |
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real_in->push_back(tensor_in); |
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if (InferManager::instance().infer(engine_name().c_str(), real_in, out, |
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batch_size)) { |
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LOG(ERROR) << "(logid=" << log_id |
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<< ") Failed do infer in fluid model: " << engine_name().c_str(); |
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return -1; |
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} |
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int64_t end = timeline.TimeStampUS(); |
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CopyBlobInfo(input_blob, output_blob); |
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AddBlobInfo(output_blob, start); |
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AddBlobInfo(output_blob, end); |
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return 0; |
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} |
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void tinypose_128x96::preprocess_det(const cv::Mat &img, float *data, |
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float &scale_factor_h, |
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float &scale_factor_w, int im_shape_h, |
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int im_shape_w, |
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const std::vector<float> &mean, |
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const std::vector<float> &scale, |
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const bool is_scale) { |
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cv::Mat resize_img; |
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cv::resize(img, resize_img, cv::Size(im_shape_w, im_shape_h), 0, 0, 1); |
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double e = 1.0; |
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if (is_scale) { |
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e /= 255.0; |
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} |
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cv::Mat img_fp; |
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(resize_img).convertTo(img_fp, CV_32FC3, e); |
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for (int h = 0; h < im_shape_h; h++) { |
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for (int w = 0; w < im_shape_w; w++) { |
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img_fp.at<cv::Vec3f>(h, w)[0] = |
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(img_fp.at<cv::Vec3f>(h, w)[0] - mean[0]) / scale[0]; |
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img_fp.at<cv::Vec3f>(h, w)[1] = |
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(img_fp.at<cv::Vec3f>(h, w)[1] - mean[1]) / scale[1]; |
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img_fp.at<cv::Vec3f>(h, w)[2] = |
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(img_fp.at<cv::Vec3f>(h, w)[2] - mean[2]) / scale[2]; |
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} |
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} |
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int rh = img_fp.rows; |
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int rw = img_fp.cols; |
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int rc = img_fp.channels(); |
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for (int i = 0; i < rc; ++i) { |
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cv::extractChannel(img_fp, cv::Mat(rh, rw, CV_32FC1, data + i * rh * rw), |
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i); |
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} |
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} |
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cv::Mat tinypose_128x96::Base2Mat(std::string &base64_data) { |
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cv::Mat img; |
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std::string s_mat; |
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s_mat = base64Decode(base64_data.data(), base64_data.size()); |
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std::vector<char> base64_img(s_mat.begin(), s_mat.end()); |
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img = cv::imdecode(base64_img, cv::IMREAD_COLOR); |
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return img; |
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} |
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std::string tinypose_128x96::base64Decode(const char *Data, int DataByte) { |
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const char DecodeTable[] = { |
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0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, |
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0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, |
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0, 0, 0, 0, 0, 0, 0, 0, 0, |
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62, |
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0, 0, 0, |
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63, |
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52, 53, 54, 55, 56, 57, 58, 59, 60, 61, |
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0, 0, 0, 0, 0, 0, 0, 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, |
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10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, |
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0, 0, 0, 0, 0, 0, 26, 27, 28, 29, 30, 31, 32, 33, 34, 35, 36, |
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37, 38, 39, 40, 41, 42, 43, 44, 45, 46, 47, 48, 49, 50, 51, |
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}; |
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std::string strDecode; |
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int nValue; |
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int i = 0; |
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while (i < DataByte) { |
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if (*Data != '\r' && *Data != '\n') { |
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nValue = DecodeTable[*Data++] << 18; |
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nValue += DecodeTable[*Data++] << 12; |
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strDecode += (nValue & 0x00FF0000) >> 16; |
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if (*Data != '=') { |
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nValue += DecodeTable[*Data++] << 6; |
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strDecode += (nValue & 0x0000FF00) >> 8; |
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if (*Data != '=') { |
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nValue += DecodeTable[*Data++]; |
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strDecode += nValue & 0x000000FF; |
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} |
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} |
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i += 4; |
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} else |
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{ |
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Data++; |
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i++; |
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} |
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} |
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return strDecode; |
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} |
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DEFINE_OP(tinypose_128x96); |
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} |
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} |
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} |
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