|
- // Copyright 2018 Tencent
- // SPDX-License-Identifier: BSD-3-Clause
-
- #include "net.h"
-
- #include <math.h>
- #if defined(USE_NCNN_SIMPLEOCV)
- #include "simpleocv.h"
- #else
- #include <opencv2/core/core.hpp>
- #include <opencv2/highgui/highgui.hpp>
- #include <opencv2/imgproc/imgproc.hpp>
- #endif
- #include <stdio.h>
-
- struct Object
- {
- cv::Rect_<float> rect;
- int label;
- float prob;
- };
-
- static inline float intersection_area(const Object& a, const Object& b)
- {
- cv::Rect_<float> inter = a.rect & b.rect;
- return inter.area();
- }
-
- static void qsort_descent_inplace(std::vector<Object>& objects, int left, int right)
- {
- int i = left;
- int j = right;
- float p = objects[(left + right) / 2].prob;
-
- while (i <= j)
- {
- while (objects[i].prob > p)
- i++;
-
- while (objects[j].prob < p)
- j--;
-
- if (i <= j)
- {
- // swap
- std::swap(objects[i], objects[j]);
-
- i++;
- j--;
- }
- }
-
- #pragma omp parallel sections
- {
- #pragma omp section
- {
- if (left < j) qsort_descent_inplace(objects, left, j);
- }
- #pragma omp section
- {
- if (i < right) qsort_descent_inplace(objects, i, right);
- }
- }
- }
-
- static void qsort_descent_inplace(std::vector<Object>& objects)
- {
- if (objects.empty())
- return;
-
- qsort_descent_inplace(objects, 0, objects.size() - 1);
- }
-
- static void nms_sorted_bboxes(const std::vector<Object>& faceobjects, std::vector<int>& picked, float nms_threshold, bool agnostic = false)
- {
- picked.clear();
-
- const int n = faceobjects.size();
-
- std::vector<float> areas(n);
- for (int i = 0; i < n; i++)
- {
- areas[i] = faceobjects[i].rect.area();
- }
-
- for (int i = 0; i < n; i++)
- {
- const Object& a = faceobjects[i];
-
- int keep = 1;
- for (int j = 0; j < (int)picked.size(); j++)
- {
- const Object& b = faceobjects[picked[j]];
-
- if (!agnostic && a.label != b.label)
- continue;
-
- // intersection over union
- float inter_area = intersection_area(a, b);
- float union_area = areas[i] + areas[picked[j]] - inter_area;
- // float IoU = inter_area / union_area
- if (inter_area / union_area > nms_threshold)
- keep = 0;
- }
-
- if (keep)
- picked.push_back(i);
- }
- }
-
- static int detect_rfcn(const cv::Mat& bgr, std::vector<Object>& objects)
- {
- ncnn::Net rfcn;
-
- rfcn.opt.use_vulkan_compute = true;
-
- // original pretrained model from https://github.com/YuwenXiong/py-R-FCN
- // https://github.com/YuwenXiong/py-R-FCN/blob/master/models/pascal_voc/ResNet-50/rfcn_end2end/test_agnostic.prototxt
- // https://1drv.ms/u/s!AoN7vygOjLIQqUWHpY67oaC7mopf
- // resnet50_rfcn_final.caffemodel
- if (rfcn.load_param("rfcn_end2end.param"))
- exit(-1);
- if (rfcn.load_model("rfcn_end2end.bin"))
- exit(-1);
-
- const int target_size = 224;
-
- const int max_per_image = 100;
- const float confidence_thresh = 0.6f; // CONF_THRESH
-
- const float nms_threshold = 0.3f; // NMS_THRESH
-
- // scale to target detect size
- int w = bgr.cols;
- int h = bgr.rows;
- float scale = 1.f;
- if (w < h)
- {
- scale = (float)target_size / w;
- w = target_size;
- h = h * scale;
- }
- else
- {
- scale = (float)target_size / h;
- h = target_size;
- w = w * scale;
- }
-
- ncnn::Mat in = ncnn::Mat::from_pixels_resize(bgr.data, ncnn::Mat::PIXEL_BGR, bgr.cols, bgr.rows, w, h);
-
- const float mean_vals[3] = {102.9801f, 115.9465f, 122.7717f};
- in.substract_mean_normalize(mean_vals, 0);
-
- ncnn::Mat im_info(3);
- im_info[0] = h;
- im_info[1] = w;
- im_info[2] = scale;
-
- // step1, extract feature and all rois
- ncnn::Extractor ex1 = rfcn.create_extractor();
-
- ex1.input("data", in);
- ex1.input("im_info", im_info);
-
- ncnn::Mat rfcn_cls;
- ncnn::Mat rfcn_bbox;
- ncnn::Mat rois; // all rois
- ex1.extract("rfcn_cls", rfcn_cls);
- ex1.extract("rfcn_bbox", rfcn_bbox);
- ex1.extract("rois", rois);
-
- // step2, extract bbox and score for each roi
- std::vector<std::vector<Object> > class_candidates;
- for (int i = 0; i < rois.c; i++)
- {
- ncnn::Extractor ex2 = rfcn.create_extractor();
-
- ncnn::Mat roi = rois.channel(i); // get single roi
- ex2.input("rfcn_cls", rfcn_cls);
- ex2.input("rfcn_bbox", rfcn_bbox);
- ex2.input("rois", roi);
-
- ncnn::Mat bbox_pred;
- ncnn::Mat cls_prob;
- ex2.extract("bbox_pred", bbox_pred);
- ex2.extract("cls_prob", cls_prob);
-
- int num_class = cls_prob.w;
- class_candidates.resize(num_class);
-
- // find class id with highest score
- int label = 0;
- float score = 0.f;
- for (int i = 0; i < num_class; i++)
- {
- float class_score = cls_prob[i];
- if (class_score > score)
- {
- label = i;
- score = class_score;
- }
- }
-
- // ignore background or low score
- if (label == 0 || score <= confidence_thresh)
- continue;
-
- // fprintf(stderr, "%d = %f\n", label, score);
-
- // unscale to image size
- float x1 = roi[0] / scale;
- float y1 = roi[1] / scale;
- float x2 = roi[2] / scale;
- float y2 = roi[3] / scale;
-
- float pb_w = x2 - x1 + 1;
- float pb_h = y2 - y1 + 1;
-
- // apply bbox regression
- float dx = bbox_pred[4];
- float dy = bbox_pred[4 + 1];
- float dw = bbox_pred[4 + 2];
- float dh = bbox_pred[4 + 3];
-
- float cx = x1 + pb_w * 0.5f;
- float cy = y1 + pb_h * 0.5f;
-
- float obj_cx = cx + pb_w * dx;
- float obj_cy = cy + pb_h * dy;
-
- float obj_w = pb_w * exp(dw);
- float obj_h = pb_h * exp(dh);
-
- float obj_x1 = obj_cx - obj_w * 0.5f;
- float obj_y1 = obj_cy - obj_h * 0.5f;
- float obj_x2 = obj_cx + obj_w * 0.5f;
- float obj_y2 = obj_cy + obj_h * 0.5f;
-
- // clip
- obj_x1 = std::max(std::min(obj_x1, (float)(bgr.cols - 1)), 0.f);
- obj_y1 = std::max(std::min(obj_y1, (float)(bgr.rows - 1)), 0.f);
- obj_x2 = std::max(std::min(obj_x2, (float)(bgr.cols - 1)), 0.f);
- obj_y2 = std::max(std::min(obj_y2, (float)(bgr.rows - 1)), 0.f);
-
- // append object
- Object obj;
- obj.rect = cv::Rect_<float>(obj_x1, obj_y1, obj_x2 - obj_x1 + 1, obj_y2 - obj_y1 + 1);
- obj.label = label;
- obj.prob = score;
-
- class_candidates[label].push_back(obj);
- }
-
- // post process
- objects.clear();
- for (int i = 0; i < (int)class_candidates.size(); i++)
- {
- std::vector<Object>& candidates = class_candidates[i];
-
- qsort_descent_inplace(candidates);
-
- std::vector<int> picked;
- nms_sorted_bboxes(candidates, picked, nms_threshold);
-
- for (int j = 0; j < (int)picked.size(); j++)
- {
- int z = picked[j];
- objects.push_back(candidates[z]);
- }
- }
-
- qsort_descent_inplace(objects);
-
- if (max_per_image > 0 && max_per_image < objects.size())
- {
- objects.resize(max_per_image);
- }
-
- return 0;
- }
-
- static void draw_objects(const cv::Mat& bgr, const std::vector<Object>& objects)
- {
- static const char* class_names[] = {"background",
- "aeroplane", "bicycle", "bird", "boat",
- "bottle", "bus", "car", "cat", "chair",
- "cow", "diningtable", "dog", "horse",
- "motorbike", "person", "pottedplant",
- "sheep", "sofa", "train", "tvmonitor"
- };
-
- cv::Mat image = bgr.clone();
-
- for (size_t i = 0; i < objects.size(); i++)
- {
- const Object& obj = objects[i];
-
- fprintf(stderr, "%d = %.5f at %.2f %.2f %.2f x %.2f\n", obj.label, obj.prob,
- obj.rect.x, obj.rect.y, obj.rect.width, obj.rect.height);
-
- cv::rectangle(image, obj.rect, cv::Scalar(255, 0, 0));
-
- char text[256];
- sprintf(text, "%s %.1f%%", class_names[obj.label], obj.prob * 100);
-
- int baseLine = 0;
- cv::Size label_size = cv::getTextSize(text, cv::FONT_HERSHEY_SIMPLEX, 0.5, 1, &baseLine);
-
- int x = obj.rect.x;
- int y = obj.rect.y - label_size.height - baseLine;
- if (y < 0)
- y = 0;
- if (x + label_size.width > image.cols)
- x = image.cols - label_size.width;
-
- cv::rectangle(image, cv::Rect(cv::Point(x, y), cv::Size(label_size.width, label_size.height + baseLine)),
- cv::Scalar(255, 255, 255), -1);
-
- cv::putText(image, text, cv::Point(x, y + label_size.height),
- cv::FONT_HERSHEY_SIMPLEX, 0.5, cv::Scalar(0, 0, 0));
- }
-
- cv::imshow("image", image);
- cv::waitKey(0);
- }
-
- int main(int argc, char** argv)
- {
- if (argc != 2)
- {
- fprintf(stderr, "Usage: %s [imagepath]\n", argv[0]);
- return -1;
- }
-
- const char* imagepath = argv[1];
-
- cv::Mat m = cv::imread(imagepath, 1);
- if (m.empty())
- {
- fprintf(stderr, "cv::imread %s failed\n", imagepath);
- return -1;
- }
-
- std::vector<Object> objects;
- detect_rfcn(m, objects);
-
- draw_objects(m, objects);
-
- return 0;
- }
|