215 lines
7.1 KiB
Python
215 lines
7.1 KiB
Python
import cv2
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import numpy as np
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from rknnlite.api import RKNNLite
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# ---------------------------
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# 配置
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# ---------------------------
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ROIS = [(604, 182, 594, 252)] # (x, y, w, h)
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IMG_SIZE = 640
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STRIDES = [8, 16, 32]
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OBJ_THRESH = 0.25
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MASK_THRESH = 0.5
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_global_rknn = None
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def init_rknn_model(model_path):
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global _global_rknn
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if _global_rknn is not None:
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return
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rknn = RKNNLite(verbose=False)
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ret = rknn.load_rknn(model_path)
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if ret != 0:
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raise RuntimeError(f"Load RKNN failed: {ret}")
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ret = rknn.init_runtime()
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if ret != 0:
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raise RuntimeError(f"Init runtime failed: {ret}")
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_global_rknn = rknn
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print(f"[INFO] RKNN model loaded: {model_path}")
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def sigmoid(x):
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return 1 / (1 + np.exp(-x))
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def dfl_decode(dfl):
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bins = np.arange(16)
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dfl = sigmoid(dfl)
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dfl /= np.sum(dfl, axis=1, keepdims=True)
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return np.sum(dfl * bins, axis=1)
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def largest_intersect_cc(mask_bin, bbox):
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x1, y1, x2, y2 = bbox
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contours, _ = cv2.findContours(mask_bin, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
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if not contours:
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return np.zeros_like(mask_bin, dtype=np.uint8)
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max_inter = 0
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best = np.zeros_like(mask_bin, dtype=np.uint8)
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for cnt in contours:
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tmp = np.zeros_like(mask_bin, dtype=np.uint8)
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cv2.drawContours(tmp, [cnt], -1, 1, -1)
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cx, cy, cw, ch = cv2.boundingRect(cnt)
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ix1 = max(cx, x1)
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iy1 = max(cy, y1)
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ix2 = min(cx + cw, x2)
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iy2 = min(cy + ch, y2)
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area = max(0, ix2 - ix1) * max(0, iy2 - iy1)
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if area > max_inter:
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max_inter = area
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best = tmp
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return best
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def seg_infer(roi):
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rknn = _global_rknn
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h0, w0 = roi.shape[:2]
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inp_img = cv2.resize(roi, (IMG_SIZE, IMG_SIZE))
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inp = inp_img[..., ::-1][None, ...]
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outputs = rknn.inference([inp])
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proto = outputs[12][0]
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proto_h, proto_w = proto.shape[1:]
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best_score = -1
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best_coef = None
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best_bbox = None
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out_i = 0
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for stride in STRIDES:
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reg = outputs[out_i][0]
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cls = outputs[out_i + 1][0, 0]
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obj = outputs[out_i + 2][0, 0]
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coef = outputs[out_i + 3][0]
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out_i += 4
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score_map = sigmoid(cls) * sigmoid(obj)
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y, x = np.unravel_index(np.argmax(score_map), score_map.shape)
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score = score_map[y, x]
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if score > best_score and score > OBJ_THRESH:
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best_score = score
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best_coef = coef[:, y, x]
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dfl = reg[:, y, x].reshape(4, 16)
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l, t, r, b = dfl_decode(dfl)
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cx = (x + 0.5) * stride
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cy = (y + 0.5) * stride
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scale = proto_w / IMG_SIZE
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x1 = int((cx - l) * scale)
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y1 = int((cy - t) * scale)
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x2 = int((cx + r) * scale)
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y2 = int((cy + b) * scale)
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best_bbox = (max(0, x1), max(0, y1), min(proto_w, x2), min(proto_h, y2))
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if best_coef is None:
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return np.zeros((h0, w0), dtype=np.uint8)
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proto_mask = sigmoid(np.tensordot(best_coef, proto, axes=1)) > MASK_THRESH
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proto_mask = proto_mask.astype(np.uint8)
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mask_final = largest_intersect_cc(proto_mask, best_bbox)
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mask_roi = cv2.resize(mask_final, (w0, h0), interpolation=cv2.INTER_NEAREST) * 255
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return mask_roi.astype(np.uint8)
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# ---------------------------
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# 主函数:支持可选可视化
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# ---------------------------
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def caculate_yemian_diff(img, visualize=False):
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"""
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输入:
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img: BGR 图像 (H, W, 3) np.ndarray
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visualize: bool, 是否生成可视化结果
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输出:
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若 visualize=False:
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(diff14: float, diff43: float, mask_area: int)
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若 visualize=True:
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(diff14: float, diff43: float, mask_area: int, vis_img: np.ndarray)
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失败时返回 (0.0, 0.0, 0) 或 (0.0, 0.0, 0, original_img)
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"""
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if _global_rknn is None:
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raise RuntimeError("RKNN model not initialized. Call init_rknn_model() first.")
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vis_img = img.copy() if visualize else None
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for (rx, ry, rw, rh) in ROIS:
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roi = img[ry:ry + rh, rx:rx + rw]
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mask_full = seg_infer(roi)
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mask_bin = mask_full // 255
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mask_area = int(np.sum(mask_bin))
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if visualize:
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green = np.zeros_like(roi)
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green[mask_bin == 1] = (0, 255, 0)
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vis_img[ry:ry + rh, rx:rx + rw] = cv2.addWeighted(roi, 0.7, green, 0.3, 0)
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contours, _ = cv2.findContours(mask_bin, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_NONE)
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if not contours:
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continue
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cnt = max(contours, key=cv2.contourArea)
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if len(cnt) < 20:
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continue
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pts_all = cnt.reshape(-1, 2)
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P1 = pts_all[np.argmin(pts_all[:, 0])] # x_min
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P4 = pts_all[np.argmin(pts_all[:, 1])] # y_min
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P3 = pts_all[np.argmax(pts_all[:, 0])] # x_max
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# 全局坐标
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P1_g = (int(P1[0] + rx), int(P1[1] + ry))
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P4_g = (int(P4[0] + rx), int(P4[1] + ry))
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P3_g = (int(P3[0] + rx), int(P3[1] + ry))
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diff14 = float(np.linalg.norm(np.array(P1_g) - np.array(P4_g)))
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diff43 = float(np.linalg.norm(np.array(P4_g) - np.array(P3_g)))
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if visualize:
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roi_vis = vis_img[ry:ry + rh, rx:rx + rw]
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local_pts = [P1.astype(int), P4.astype(int), P3.astype(int)]
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colors = [(255, 0, 0), (0, 255, 0)]
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lengths = [diff14, diff43]
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# 画线
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cv2.line(vis_img, P1_g, P4_g, colors[0], 2)
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cv2.line(vis_img, P4_g, P3_g, colors[1], 2)
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# 标长度
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mid14 = ((P1_g[0] + P4_g[0]) // 2, (P1_g[1] + P4_g[1]) // 2 - 10)
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mid43 = ((P4_g[0] + P3_g[0]) // 2, (P4_g[1] + P3_g[1]) // 2 - 10)
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cv2.putText(vis_img, f"{diff14:.1f}", mid14, cv2.FONT_HERSHEY_SIMPLEX, 0.5, colors[0], 1)
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cv2.putText(vis_img, f"{diff43:.1f}", mid43, cv2.FONT_HERSHEY_SIMPLEX, 0.5, colors[1], 1)
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# 标点名
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labels = ["P1", "P4", "P3"]
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points = [P1_g, P4_g, P3_g]
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offsets = [(-25, -10), (-25, -10), (10, -10)]
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for lab, pt, off in zip(labels, points, offsets):
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x = max(10, min(pt[0] + off[0], img.shape[1] - 50))
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y = max(20, min(pt[1] + off[1], img.shape[0] - 10))
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cv2.putText(vis_img, lab, (x, y), cv2.FONT_HERSHEY_SIMPLEX, 0.5, (255, 255, 255), 1)
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# 面积
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cv2.putText(vis_img, f"Area: {mask_area}", (rx + 10, ry + 30),
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cv2.FONT_HERSHEY_SIMPLEX, 0.6, (255, 255, 255), 2)
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if visualize:
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return diff14, diff43, mask_area, vis_img
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else:
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return diff14, diff43, mask_area
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# 检测失败
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if visualize:
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return 0.0, 0.0, 0, img.copy()
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else:
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return 0.0, 0.0, 0
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# ---------------------------
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# 示例用法
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# ---------------------------
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if __name__ == "__main__":
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init_rknn_model("60seg.rknn")
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img = cv2.imread("1.png")
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if img is None:
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raise FileNotFoundError("1.png")
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# 不可视化
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d14, d43, area = caculate_yemian_diff(img)
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print(f"Without vis: {d14:.2f}, {d43:.2f}, {area}")
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# 可视化
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d14, d43, area, vis = caculate_yemian_diff(img, visualize=True)
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cv2.imwrite("output_vis.png", vis)
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print(f"With vis: saved to output_vis.png") |