# Ultralytics YOLO 🚀, AGPL-3.0 license import argparse import cv2 import numpy as np import onnxruntime as ort from ultralytics.utils import ASSETS, yaml_load from ultralytics.utils.checks import check_yaml from ultralytics.utils.plotting import Colors class YOLOv8Seg: """YOLOv8 segmentation model.""" def __init__(self, onnx_model): """ Initialization. Args: onnx_model (str): Path to the ONNX model. """ # Build Ort session self.session = ort.InferenceSession( onnx_model, providers=["CUDAExecutionProvider", "CPUExecutionProvider"] if ort.get_device() == "GPU" else ["CPUExecutionProvider"], ) # Numpy dtype: support both FP32 and FP16 onnx model self.ndtype = np.half if self.session.get_inputs()[0].type == "tensor(float16)" else np.single # Get model width and height(YOLOv8-seg only has one input) self.model_height, self.model_width = [x.shape for x in self.session.get_inputs()][0][-2:] # Load COCO class names self.classes = yaml_load(check_yaml("coco8.yaml"))["names"] # Create color palette self.color_palette = Colors() def __call__(self, im0, conf_threshold=0.4, iou_threshold=0.45, nm=32): """ The whole pipeline: pre-process -> inference -> post-process. Args: im0 (Numpy.ndarray): original input image. conf_threshold (float): confidence threshold for filtering predictions. iou_threshold (float): iou threshold for NMS. nm (int): the number of masks. Returns: boxes (List): list of bounding boxes. segments (List): list of segments. masks (np.ndarray): [N, H, W], output masks. """ # Pre-process im, ratio, (pad_w, pad_h) = self.preprocess(im0) # Ort inference preds = self.session.run(None, {self.session.get_inputs()[0].name: im}) # Post-process boxes, segments, masks = self.postprocess( preds, im0=im0, ratio=ratio, pad_w=pad_w, pad_h=pad_h, conf_threshold=conf_threshold, iou_threshold=iou_threshold, nm=nm, ) return boxes, segments, masks def preprocess(self, img): """ Pre-processes the input image. Args: img (Numpy.ndarray): image about to be processed. Returns: img_process (Numpy.ndarray): image preprocessed for inference. ratio (tuple): width, height ratios in letterbox. pad_w (float): width padding in letterbox. pad_h (float): height padding in letterbox. """ # Resize and pad input image using letterbox() (Borrowed from Ultralytics) shape = img.shape[:2] # original image shape new_shape = (self.model_height, self.model_width) r = min(new_shape[0] / shape[0], new_shape[1] / shape[1]) ratio = r, r new_unpad = int(round(shape[1] * r)), int(round(shape[0] * r)) pad_w, pad_h = (new_shape[1] - new_unpad[0]) / 2, (new_shape[0] - new_unpad[1]) / 2 # wh padding if shape[::-1] != new_unpad: # resize img = cv2.resize(img, new_unpad, interpolation=cv2.INTER_LINEAR) top, bottom = int(round(pad_h - 0.1)), int(round(pad_h + 0.1)) left, right = int(round(pad_w - 0.1)), int(round(pad_w + 0.1)) img = cv2.copyMakeBorder(img, top, bottom, left, right, cv2.BORDER_CONSTANT, value=(114, 114, 114)) # Transforms: HWC to CHW -> BGR to RGB -> div(255) -> contiguous -> add axis(optional) img = np.ascontiguousarray(np.einsum("HWC->CHW", img)[::-1], dtype=self.ndtype) / 255.0 img_process = img[None] if len(img.shape) == 3 else img return img_process, ratio, (pad_w, pad_h) def postprocess(self, preds, im0, ratio, pad_w, pad_h, conf_threshold, iou_threshold, nm=32): """ Post-process the prediction. Args: preds (Numpy.ndarray): predictions come from ort.session.run(). im0 (Numpy.ndarray): [h, w, c] original input image. ratio (tuple): width, height ratios in letterbox. pad_w (float): width padding in letterbox. pad_h (float): height padding in letterbox. conf_threshold (float): conf threshold. iou_threshold (float): iou threshold. nm (int): the number of masks. Returns: boxes (List): list of bounding boxes. segments (List): list of segments. masks (np.ndarray): [N, H, W], output masks. """ x, protos = preds[0], preds[1] # Two outputs: predictions and protos # Transpose dim 1: (Batch_size, xywh_conf_cls_nm, Num_anchors) -> (Batch_size, Num_anchors, xywh_conf_cls_nm) x = np.einsum("bcn->bnc", x) # Predictions filtering by conf-threshold x = x[np.amax(x[..., 4:-nm], axis=-1) > conf_threshold] # Create a new matrix which merge these(box, score, cls, nm) into one # For more details about `numpy.c_()`: https://numpy.org/doc/1.26/reference/generated/numpy.c_.html x = np.c_[x[..., :4], np.amax(x[..., 4:-nm], axis=-1), np.argmax(x[..., 4:-nm], axis=-1), x[..., -nm:]] # NMS filtering x = x[cv2.dnn.NMSBoxes(x[:, :4], x[:, 4], conf_threshold, iou_threshold)] # Decode and return if len(x) > 0: # Bounding boxes format change: cxcywh -> xyxy x[..., [0, 1]] -= x[..., [2, 3]] / 2 x[..., [2, 3]] += x[..., [0, 1]] # Rescales bounding boxes from model shape(model_height, model_width) to the shape of original image x[..., :4] -= [pad_w, pad_h, pad_w, pad_h] x[..., :4] /= min(ratio) # Bounding boxes boundary clamp x[..., [0, 2]] = x[:, [0, 2]].clip(0, im0.shape[1]) x[..., [1, 3]] = x[:, [1, 3]].clip(0, im0.shape[0]) # Process masks masks = self.process_mask(protos[0], x[:, 6:], x[:, :4], im0.shape) # Masks -> Segments(contours) segments = self.masks2segments(masks) return x[..., :6], segments, masks # boxes, segments, masks else: return [], [], [] @staticmethod def masks2segments(masks): """ Takes a list of masks(n,h,w) and returns a list of segments(n,xy), from https://github.com/ultralytics/ultralytics/blob/main/ultralytics/utils/ops.py. Args: masks (numpy.ndarray): the output of the model, which is a tensor of shape (batch_size, 160, 160). Returns: segments (List): list of segment masks. """ segments = [] for x in masks.astype("uint8"): c = cv2.findContours(x, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_NONE)[0] # CHAIN_APPROX_SIMPLE if c: c = np.array(c[np.array([len(x) for x in c]).argmax()]).reshape(-1, 2) else: c = np.zeros((0, 2)) # no segments found segments.append(c.astype("float32")) return segments @staticmethod def crop_mask(masks, boxes): """ Takes a mask and a bounding box, and returns a mask that is cropped to the bounding box, from https://github.com/ultralytics/ultralytics/blob/main/ultralytics/utils/ops.py. Args: masks (Numpy.ndarray): [n, h, w] tensor of masks. boxes (Numpy.ndarray): [n, 4] tensor of bbox coordinates in relative point form. Returns: (Numpy.ndarray): The masks are being cropped to the bounding box. """ n, h, w = masks.shape x1, y1, x2, y2 = np.split(boxes[:, :, None], 4, 1) r = np.arange(w, dtype=x1.dtype)[None, None, :] c = np.arange(h, dtype=x1.dtype)[None, :, None] return masks * ((r >= x1) * (r < x2) * (c >= y1) * (c < y2)) def process_mask(self, protos, masks_in, bboxes, im0_shape): """ Takes the output of the mask head, and applies the mask to the bounding boxes. This produces masks of higher quality but is slower, from https://github.com/ultralytics/ultralytics/blob/main/ultralytics/utils/ops.py. Args: protos (numpy.ndarray): [mask_dim, mask_h, mask_w]. masks_in (numpy.ndarray): [n, mask_dim], n is number of masks after nms. bboxes (numpy.ndarray): bboxes re-scaled to original image shape. im0_shape (tuple): the size of the input image (h,w,c). Returns: (numpy.ndarray): The upsampled masks. """ c, mh, mw = protos.shape masks = np.matmul(masks_in, protos.reshape((c, -1))).reshape((-1, mh, mw)).transpose(1, 2, 0) # HWN masks = np.ascontiguousarray(masks) masks = self.scale_mask(masks, im0_shape) # re-scale mask from P3 shape to original input image shape masks = np.einsum("HWN -> NHW", masks) # HWN -> NHW masks = self.crop_mask(masks, bboxes) return np.greater(masks, 0.5) @staticmethod def scale_mask(masks, im0_shape, ratio_pad=None): """ Takes a mask, and resizes it to the original image size, from https://github.com/ultralytics/ultralytics/blob/main/ultralytics/utils/ops.py. Args: masks (np.ndarray): resized and padded masks/images, [h, w, num]/[h, w, 3]. im0_shape (tuple): the original image shape. ratio_pad (tuple): the ratio of the padding to the original image. Returns: masks (np.ndarray): The masks that are being returned. """ im1_shape = masks.shape[:2] if ratio_pad is None: # calculate from im0_shape gain = min(im1_shape[0] / im0_shape[0], im1_shape[1] / im0_shape[1]) # gain = old / new pad = (im1_shape[1] - im0_shape[1] * gain) / 2, (im1_shape[0] - im0_shape[0] * gain) / 2 # wh padding else: pad = ratio_pad[1] # Calculate tlbr of mask top, left = int(round(pad[1] - 0.1)), int(round(pad[0] - 0.1)) # y, x bottom, right = int(round(im1_shape[0] - pad[1] + 0.1)), int(round(im1_shape[1] - pad[0] + 0.1)) if len(masks.shape) < 2: raise ValueError(f'"len of masks shape" should be 2 or 3, but got {len(masks.shape)}') masks = masks[top:bottom, left:right] masks = cv2.resize( masks, (im0_shape[1], im0_shape[0]), interpolation=cv2.INTER_LINEAR ) # INTER_CUBIC would be better if len(masks.shape) == 2: masks = masks[:, :, None] return masks def draw_and_visualize(self, im, bboxes, segments, vis=False, save=True): """ Draw and visualize results. Args: im (np.ndarray): original image, shape [h, w, c]. bboxes (numpy.ndarray): [n, 4], n is number of bboxes. segments (List): list of segment masks. vis (bool): imshow using OpenCV. save (bool): save image annotated. Returns: None """ # Draw rectangles and polygons im_canvas = im.copy() for (*box, conf, cls_), segment in zip(bboxes, segments): # draw contour and fill mask cv2.polylines(im, np.int32([segment]), True, (255, 255, 255), 2) # white borderline cv2.fillPoly(im_canvas, np.int32([segment]), self.color_palette(int(cls_), bgr=True)) # draw bbox rectangle cv2.rectangle( im, (int(box[0]), int(box[1])), (int(box[2]), int(box[3])), self.color_palette(int(cls_), bgr=True), 1, cv2.LINE_AA, ) cv2.putText( im, f"{self.classes[cls_]}: {conf:.3f}", (int(box[0]), int(box[1] - 9)), cv2.FONT_HERSHEY_SIMPLEX, 0.7, self.color_palette(int(cls_), bgr=True), 2, cv2.LINE_AA, ) # Mix image im = cv2.addWeighted(im_canvas, 0.3, im, 0.7, 0) # Show image if vis: cv2.imshow("demo", im) cv2.waitKey(0) cv2.destroyAllWindows() # Save image if save: cv2.imwrite("demo.jpg", im) if __name__ == "__main__": # Create an argument parser to handle command-line arguments parser = argparse.ArgumentParser() parser.add_argument("--model", type=str, required=True, help="Path to ONNX model") parser.add_argument("--source", type=str, default=str(ASSETS / "bus.jpg"), help="Path to input image") parser.add_argument("--conf", type=float, default=0.25, help="Confidence threshold") parser.add_argument("--iou", type=float, default=0.45, help="NMS IoU threshold") args = parser.parse_args() # Build model model = YOLOv8Seg(args.model) # Read image by OpenCV img = cv2.imread(args.source) # Inference boxes, segments, _ = model(img, conf_threshold=args.conf, iou_threshold=args.iou) # Draw bboxes and polygons if len(boxes) > 0: model.draw_and_visualize(img, boxes, segments, vis=False, save=True)