YOLOv7-Openvino和ONNXRuntime推理【CPU】

纯检测系列
YOLOv5-Openvino和ONNXRuntime推理【CPU】
YOLOv6-Openvino和ONNXRuntime推理【CPU】
YOLOv8-Openvino和ONNXRuntime推理【CPU】
YOLOv7-Openvino和ONNXRuntime推理【CPU】
YOLOv9-Openvino和ONNXRuntime推理【CPU】
跟踪系列
YOLOv5/6/7-Openvino-ByteTrack【CPU】
YOLOv8/9-Openvino-ByteTrack【CPU】
分割系列
YOLOv5_seg-Openvino和ONNXRuntime推理【CPU】
YOLOv8_seg-Openvino和ONNXRuntime推理【CPU】
关键点系列
YOLOv7_pose-Openvino和ONNXRuntime推理【CPU】
YOLOv8_pose-Openvino和ONNXRuntime推理【CPU】

注:YOLOv5、YOLOv6和YOLOv7代码内容基本一致!YOLOv8和YOLOv9代码内容基本一致!

全部代码Github:https://github.com/Bigtuo/YOLOv8_Openvino

1 环境:

CPU:i5-12500

Python:3.8.18

2 安装Openvino和ONNXRuntime

2.1 Openvino简介

Openvino是由Intel开发的专门用于优化和部署人工智能推理的半开源的工具包,主要用于对深度推理做优化。

Openvino内部集成了Opencv、TensorFlow模块,除此之外它还具有强大的Plugin开发框架,允许开发者在Openvino之上对推理过程做优化。

Openvino整体框架为:Openvino前端→ Plugin中间层→ Backend后端

Openvino的优点在于它屏蔽了后端接口,提供了统一操作的前端API,开发者可以无需关心后端的实现,例如后端可以是TensorFlow、Keras、ARM-NN,通过Plugin提供给前端接口调用,也就意味着一套代码在Openvino之上可以运行在多个推理引擎之上,Openvino像是类似聚合一样的开发包。

2.2 ONNXRuntime简介

ONNXRuntime是微软推出的一款推理框架,用户可以非常便利的用其运行一个onnx模型。ONNXRuntime支持多种运行后端包括CPU,GPU,TensorRT,DML等。可以说ONNXRuntime是对ONNX模型最原生的支持。

虽然大家用ONNX时更多的是作为一个中间表示,从pytorch转到onnx后直接喂到TensorRT或MNN等各种后端框架,但这并不能否认ONNXRuntime是一款非常优秀的推理框架。而且由于其自身只包含推理功能(最新的ONNXRuntime甚至已经可以训练),通过阅读其源码可以解深度学习框架的一些核心功能原理(op注册,内存管理,运行逻辑等)

总体来看,整个ONNXRuntime的运行可以分为三个阶段,Session构造,模型加载与初始化和运行。和其他所有主流框架相同,ONNXRuntime最常用的语言是python,而实际负责执行框架运行的则是C++。

2.3 安装

python 复制代码
pip install openvino -i  https://pypi.tuna.tsinghua.edu.cn/simple
pip install onnxruntime -i  https://pypi.tuna.tsinghua.edu.cn/simple

3 YOLOv7介绍

YOLOv7详解-可爱版
YOLOv7官网

python 复制代码
# pt2onnx,加grid是将三个头整合一起,不加则推理输出是各个头部输出,需要自己再写处理;end2end加了是包含nms,这里不加!
python export.py --weights yolov7.pt --grid  

4 基于Openvino和ONNXRuntime推理

下面代码整个处理过程主要包括:预处理--->推理--->后处理--->画图。

假设图像resize为640×640,

前处理输出结果维度:(1, 3, 640, 640);

推理输出结果维度:(1, 8400×3, 85),其中85表示4个box坐标信息+置信度分数+80个类别概率,8400×3表示(80×80+40×40+20×20)×3,不同于v8与v9采用类别里面最大的概率作为置信度score;

后处理输出结果维度:(5, 6),其中第一个5表示图bus.jpg检出5个目标,第二个维度6表示(x1, y1, x2, y2, conf, cls)。

注:与YOLOv5/v6后处理逻辑一致,可通用!!!

4.1 全部代码

python 复制代码
import argparse
import time 
import cv2
import numpy as np
from openvino.runtime import Core  # pip install openvino -i  https://pypi.tuna.tsinghua.edu.cn/simple
import onnxruntime as ort  # 使用onnxruntime推理用上,pip install onnxruntime,默认安装CPU


# COCO默认的80类
CLASSES = ['person', 'bicycle', 'car', 'motorcycle', 'airplane', 'bus', 'train', 'truck', 'boat', 'traffic light',
            'fire hydrant', 'stop sign', 'parking meter', 'bench', 'bird', 'cat', 'dog', 'horse', 'sheep', 'cow',
              'elephant', 'bear', 'zebra', 'giraffe', 'backpack', 'umbrella', 'handbag', 'tie', 'suitcase', 'frisbee',
                'skis', 'snowboard', 'sports ball', 'kite', 'baseball bat', 'baseball glove', 'skateboard', 'surfboard',
                  'tennis racket', 'bottle', 'wine glass', 'cup', 'fork', 'knife', 'spoon', 'bowl', 'banana', 'apple', 'sandwich',
                    'orange', 'broccoli', 'carrot', 'hot dog', 'pizza', 'donut', 'cake', 'chair', 'couch', 'potted plant', 'bed',
                      'dining table', 'toilet', 'tv', 'laptop', 'mouse', 'remote', 'keyboard', 'cell phone', 'microwave', 'oven',
                        'toaster', 'sink', 'refrigerator', 'book', 'clock', 'vase', 'scissors', 'teddy bear', 'hair drier', 'toothbrush']


class OpenvinoInference(object):
    def __init__(self, onnx_path):
        self.onnx_path = onnx_path
        ie = Core()
        self.model_onnx = ie.read_model(model=self.onnx_path)
        self.compiled_model_onnx = ie.compile_model(model=self.model_onnx, device_name="CPU")
        self.output_layer_onnx = self.compiled_model_onnx.output(0)

    def predict(self, datas):
        predict_data = self.compiled_model_onnx([datas])[self.output_layer_onnx]
        return predict_data
    

class YOLOv7:
    """YOLOv7 object detection model class for handling inference and visualization."""

    def __init__(self, onnx_model, imgsz=(640, 640), infer_tool='openvino'):
        """
        Initialization.

        Args:
            onnx_model (str): Path to the ONNX model.
        """
        self.infer_tool = infer_tool
        if self.infer_tool == 'openvino':
            # 构建openvino推理引擎
            self.openvino = OpenvinoInference(onnx_model)
            self.ndtype = np.single
        else:
            # 构建onnxruntime推理引擎
            self.ort_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.ort_session.get_inputs()[0].type == 'tensor(float16)' else np.single
       
        self.classes = CLASSES  # 加载模型类别
        self.model_height, self.model_width = imgsz[0], imgsz[1]  # 图像resize大小
        self.color_palette = np.random.uniform(0, 255, size=(len(self.classes), 3))  # 为每个类别生成调色板

    def __call__(self, im0, conf_threshold=0.4, iou_threshold=0.45):
        """
        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.

        Returns:
            boxes (List): list of bounding boxes.
        """
        # 前处理Pre-process
        t1 = time.time()
        im, ratio, (pad_w, pad_h) = self.preprocess(im0)
        print('预处理时间:{:.3f}s'.format(time.time() - t1))
        
        # 推理 inference
        t2 = time.time()
        if self.infer_tool == 'openvino':
            preds = self.openvino.predict(im)
        else:
            preds = self.ort_session.run(None, {self.ort_session.get_inputs()[0].name: im})[0]
        print('推理时间:{:.2f}s'.format(time.time() - t2))
        
        # 后处理Post-process
        t3 = time.time()
        boxes = self.postprocess(preds,
                                im0=im0,
                                ratio=ratio,
                                pad_w=pad_w,
                                pad_h=pad_h,
                                conf_threshold=conf_threshold,
                                iou_threshold=iou_threshold,
                                )
        print('后处理时间:{:.3f}s'.format(time.time() - t3))

        return boxes
        
    # 前处理,包括:resize, pad, HWC to CHW,BGR to RGB,归一化,增加维度CHW -> BCHW
    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))  # 填充
        
        # 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)
    
    # 后处理,包括:阈值过滤与NMS
    def postprocess(self, preds, im0, ratio, pad_w, pad_h, conf_threshold, iou_threshold):
        """
        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.

        Returns:
            boxes (List): list of bounding boxes.
        """
        # (Batch_size, Num_anchors, xywh_score_conf_cls), v5和v6_1.0的[..., 4]是置信度分数,v8v9采用类别里面最大的概率作为置信度score
        x = preds  # outputs: predictions (1, 8400*3, 85)
    
        # Predictions filtering by conf-threshold
        x = x[x[..., 4] > conf_threshold]
       
        # Create a new matrix which merge these(box, score, cls) into one
        # For more details about `numpy.c_()`: https://numpy.org/doc/1.26/reference/generated/numpy.c_.html
        x = np.c_[x[..., :4], x[..., 4], np.argmax(x[..., 5:], axis=-1)]

        # NMS filtering
        # 经过NMS后的值, np.array([[x, y, w, h, conf, cls], ...]), shape=(-1, 4 + 1 + 1)
        x = x[cv2.dnn.NMSBoxes(x[:, :4], x[:, 4], conf_threshold, iou_threshold)]
    
        # 重新缩放边界框,为画图做准备
        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])

            return x[..., :6]  # boxes
        else:
            return []

    # 绘框
    def draw_and_visualize(self, im, bboxes, vis=False, save=True):
        """
        Draw and visualize results.

        Args:
            im (np.ndarray): original image, shape [h, w, c].
            bboxes (numpy.ndarray): [n, 6], n is number of bboxes.
            vis (bool): imshow using OpenCV.
            save (bool): save image annotated.

        Returns:
            None
        """
        # Draw rectangles 
        for (*box, conf, cls_) in bboxes:
            # draw bbox rectangle
            cv2.rectangle(im, (int(box[0]), int(box[1])), (int(box[2]), int(box[3])),
                          self.color_palette[int(cls_)], 1, cv2.LINE_AA)
            cv2.putText(im, f'{self.classes[int(cls_)]}: {conf:.3f}', (int(box[0]), int(box[1] - 9)),
                        cv2.FONT_HERSHEY_SIMPLEX, 0.7, self.color_palette[int(cls_)], 2, cv2.LINE_AA)
    
        # 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, default='weights/yolov7.onnx', help='Path to ONNX model')
    parser.add_argument('--source', type=str, default=str('bus.jpg'), help='Path to input image')
    parser.add_argument('--imgsz', type=tuple, default=(640, 640), help='Image input size')
    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')
    parser.add_argument('--infer_tool', type=str, default='openvinos', choices=("openvino", "onnxruntime"), help='选择推理引擎')
    args = parser.parse_args()

    # Build model
    model = YOLOv7(args.model, args.imgsz, args.infer_tool)

    # Read image by OpenCV
    img = cv2.imread(args.source)
   
    # Inference
    boxes = model(img, conf_threshold=args.conf, iou_threshold=args.iou)

    # Visualize
    if len(boxes) > 0:
        model.draw_and_visualize(img, boxes, vis=False, save=True)
    

4.2 结果

具体时间消耗:

预处理时间:0.005s(包含Pad)

推理时间:0.25s(Openvino)

推理时间:0.40s(ONNXRuntime)

后处理时间:0.001s

注:640×640下。

相关推荐
Flittly3 分钟前
【SpringAIAlibaba新手村系列】(3)ChatModel 与 ChatClient 的深度对比
java·人工智能·spring boot·spring
大厂观察员3 分钟前
AI日记:BERT 和 GPT 选型难题怎么破
大数据·人工智能
GOWIN革文品牌咨询7 分钟前
B2B品牌架构实操:集团品牌、业务品牌、产品品牌的6问判断法
大数据·人工智能·重构·智能设备·b2b品牌策划·b2b品牌设计
梦梦代码精12 分钟前
开源即商用,预期产出、风险与优化建议
人工智能·gitee·前端框架·开源·github
咕噜签名-铁蛋12 分钟前
GPU型实例安装nvidia-fabricmanager服务完整实操指南
大数据·数据库·人工智能·ai编程
zero159713 分钟前
AI 编程黄金搭档:Superpowers Skills × OpenSpec 实战指南
人工智能·规范驱动开发·openspec·superpowers·ai高效编程
薛定猫AI24 分钟前
【深度解析】Claude Auto Dream:从“短期对话”到“项目级心智模型”的记忆系统升级
人工智能·chatgpt
大数据AI人工智能培训专家培训讲师叶梓27 分钟前
AI开始改写自己的进化规则:Meta超智能体研究解析
人工智能·大模型·agi·智能体·人工智能讲师·大模型讲师
Mr.Cheng.27 分钟前
Knowledge Neurons in Pretrained Transformers
人工智能
Ai财富密码29 分钟前
AI生成大屏可视化:数据智能驱动下的高维洞察与决策中枢
开发语言·人工智能·python·sdd