opencv - 相机姿态估计给出错误结果

标签 opencv 3d-reconstruction opencv-python

我正在尝试根据两个不同图像中的匹配点来估计相对摄像机的运动。很像这里描述的:
Camera pose estimation: How do I interpret rotation and translation matrices?

但是估计的平移和旋转没有意义。

我使用综合输入来确保所有点均有效且位置正确。

10 x 10 x 10点在立方体中均匀分布。
(以蓝色正面,红色背面,较浅的顶部和较暗的底部绘制的多维数据集)

zeroProjection
相机在立方体的前面,指向正面。

rotate90projection
指向立方体左侧的摄像机指向左侧面。

我绘制了两个投影。您可以轻松地从视觉上验证相机是否已平移90度并在两个投影之间的x-z平面中沿对角线移动。

在代码中,旋转度(以度为单位)为(0,-90,0)

转换为(0.7071,0,0.7071),相机移动距离正好为1。

然后,我在2d点集上执行findEssentialMat()和restorePose()以获得平移和旋转估计。

我希望看到与生成图像时相同的平移和旋转,但是估计完全错误:

rotation estimate: (-74.86565284711004, -48.52201867665918, 121.26023708879158)
translation estimate: [[0.96576997]
 [0.17203598]
 [0.19414426]]

如何恢复实际的(0,-90,0),(0.7071,0,0,7071)转换?

显示两个立方体图像并打印出估计的完整代码:
import cv2
import numpy as np
import math


def cameraMatrix(f, w, h):
    return np.array([
                     [f, 0, w/2],
                     [0, f, h/2],
                     [0, 0, 1]])


n = 10
f = 300
w = 640
h = 480
K = cameraMatrix(f, w, h)


def cube(x=0, y=0, z=0, radius=1):
    c = np.zeros((n * n * n, 3), dtype=np.float32)
    for i in range(0, n):
        for j in range(0, n):
            for k in range(0, n):
                index = i + j * n + k * n * n
                c[index] = [i, j, k]
    c = 2 * c / (n - 1) - 1
    c *= radius
    c += [x, y, z]
    return c


def project3dTo2dArray(points3d, K, rotation, translation):
    imagePoints, _ = cv2.projectPoints(points3d,
                                       rotation,
                                       translation,
                                       K,
                                       np.array([]))
    p2d = imagePoints.reshape((imagePoints.shape[0],2))
    return p2d


def estimate_pose(projectionA, projectionB):
    E, _ = cv2.findEssentialMat(projectionA, projectionB, focal = f)
    _, r, t, _ = cv2.recoverPose(E,  projectionA, projectionB)
    angles, _, _, _, _, _ = cv2.RQDecomp3x3(r)
    print('rotation estimate:', angles)
    print('translation estimate:', t)


def main():
    c = cube(0, 0, math.sqrt(.5), 0.1)
    rotation = np.array([[0], [0], [0]], dtype=np.float32)
    translation = np.array([[0], [0], [0]], dtype=np.float32)
    zeroProjection = project3dTo2dArray(c, K, rotation, translation)
    displayCube(w, h, zeroProjection)

    rotation = np.array([[0], [-90], [0]], dtype=np.float32)
    translation = np.array([[math.sqrt(.5)], [0], [math.sqrt(.5)]], dtype=np.float32)
    print('applying rotation: ', rotation)
    print('applying translation: ', translation)
    rotate90projection = project3dTo2dArray(c, K, rotation * math.pi / 180, translation)
    displayCube(w, h, rotate90projection)

    estimate_pose(zeroProjection, rotate90projection)


def displayCube(w, h, points):
    img = np.zeros((h, w, 3), dtype=np.uint8)

    plotCube(img, points)

    cv2.imshow('img', img)
    k = cv2.waitKey(0) & 0xff
    if k == ord('q'):
        exit(0)


def plotCube(img, points):
    # Red back face
    cv2.line(img, tuple(points[n*n*(n-1)]),         tuple(points[n*n*(n-1)+n-1]),         (0, 0, 255), 2)
    cv2.line(img, tuple(points[n*n*(n-1)+n*(n-1)]), tuple(points[n*n*(n-1)+n*(n-1)+n-1]), (0, 0, 128), 2)
    cv2.line(img, tuple(points[n*n*(n-1)]),         tuple(points[n*n*(n-1)+n*(n-1)]),     (0, 0, 200), 2)
    cv2.line(img, tuple(points[n*n*(n-1)+n-1]),     tuple(points[n*n*(n-1)+n*(n-1)+n-1]), (0, 0, 200), 2)

    # gray connectors
    cv2.line(img, tuple(points[0]), tuple(points[n*n*(n-1)]), (150, 150, 150), 2)
    cv2.line(img, tuple(points[n-1]), tuple(points[n*n*(n-1)+n-1]), (150, 150, 150), 2)
    cv2.line(img, tuple(points[n*(n-1)]), tuple(points[n*n*(n-1)+n*(n-1)]), (100, 100, 100), 2)
    cv2.line(img, tuple(points[n*(n-1)+n-1]), tuple(points[n*n*(n-1)+n*(n-1)+n-1]), (100, 100, 100), 2)

    # Blue front face
    cv2.line(img, tuple(points[0]),       tuple(points[n-1]),         (255, 0, 0), 2)
    cv2.line(img, tuple(points[n*(n-1)]), tuple(points[n*(n-1)+n-1]), (128, 0, 0), 2)
    cv2.line(img, tuple(points[0]),       tuple(points[n*(n-1)]),     (200, 0, 0), 2)
    cv2.line(img, tuple(points[n-1]),     tuple(points[n*(n-1)+n-1]), (200, 0, 0), 2)


main()

最佳答案

原来是我代码中的一些小错误(例如错误的主要观点)。
下面的工作代码显示了3张图片。

首先是显示在相机前面的立方体。
其次是相同的立方体,但投影不同。相机已移动1个单位并围绕所有3个轴旋转。
摄像机的平移和旋转是根据两个投影进行估算的。
第三部分显示使用旋转和平移估算值投影的多维数据集。

该代码有效,因为第二张和第三张图片相似。

import cv2
import numpy as np
import math


def cameraMatrix(f, w, h):
    return np.array([
                     [f, 0, w/2],
                     [0, f, h/2],
                     [0, 0, 1]])


n = 10
f = 300
w = 640
h = 480
K = cameraMatrix(f, w, h)


def cube(x=0, y=0, z=0, radius=1):
    c = np.zeros((n * n * n, 3), dtype=np.float32)
    for i in range(0, n):
        for j in range(0, n):
            for k in range(0, n):
                index = i + j * n + k * n * n
                c[index] = [i, j, k]
    c = 2 * c / (n - 1) - 1
    c *= radius
    c += [x, y, z]
    return c


def project3dTo2dArray(points3d, K, rotation, translation):
    imagePoints, _ = cv2.projectPoints(points3d,
                                       rotation,
                                       translation,
                                       K,
                                       np.array([]))
    p2d = imagePoints.reshape((imagePoints.shape[0],2))
    return p2d


def estimate_pose(projectionA, projectionB):
    principal_point = (w/2,h/2)
    E, m = cv2.findEssentialMat(projectionA, projectionB, focal = f, pp = principal_point, method=cv2.RANSAC, threshold=1, prob=0.999)
    _, r, t, _ = cv2.recoverPose(E,  projectionA, projectionB, focal = f, pp = principal_point, mask = m)
    angles, _, _, _, _, _ = cv2.RQDecomp3x3(r)
    return angles, t


def main():
    c = cube(0, 0, math.sqrt(.5), 0.1)
    rotation = np.array([[0], [0], [0]], dtype=np.float32)
    translation = np.array([[0], [0], [0]], dtype=np.float32)
    zeroProjection = project3dTo2dArray(c, K, rotation, translation)
    displayCube(w, h, zeroProjection)

    rotation = np.array([[10], [-30], [5]], dtype=np.float32)
    translation = np.array([[math.sqrt(.7)], [0], [math.sqrt(.3)]], dtype=np.float32)

    print('applying rotation: ', rotation)
    print('applying translation: ', translation)
    movedprojection = project3dTo2dArray(c, K, rotation * math.pi / 180, translation)
    displayCube(w, h, movedprojection)

    estRot, estTra= estimate_pose(zeroProjection, movedprojection)
    print('rotation estimate:', estRot)
    print('translation estimate:', estTra)

    rotation = np.array([[estRot[0]], [estRot[1]], [estRot[2]]], dtype=np.float32)
    translation = np.array([[estTra[0]], [estTra[1]], [estTra[2]]], dtype=np.float32)
    estimateProjection = project3dTo2dArray(c, K, rotation * math.pi / 180, translation)
    displayCube(w, h, estimateProjection)


def displayCube(w, h, points):
    img = np.zeros((h, w, 3), dtype=np.uint8)

    plotCube(img, points)

    cv2.imshow('img', img)
    k = cv2.waitKey(0) & 0xff
    if k == ord('q'):
        exit(0)


def plotCube(img, points):
    # Red back face
    cv2.line(img, tuple(points[n*n*(n-1)]),         tuple(points[n*n*(n-1)+n-1]),         (0, 0, 255), 2)
    cv2.line(img, tuple(points[n*n*(n-1)+n*(n-1)]), tuple(points[n*n*(n-1)+n*(n-1)+n-1]), (0, 0, 128), 2)
    cv2.line(img, tuple(points[n*n*(n-1)]),         tuple(points[n*n*(n-1)+n*(n-1)]),     (0, 0, 200), 2)
    cv2.line(img, tuple(points[n*n*(n-1)+n-1]),     tuple(points[n*n*(n-1)+n*(n-1)+n-1]), (0, 0, 200), 2)

    # gray connectors
    cv2.line(img, tuple(points[0]), tuple(points[n*n*(n-1)]), (150, 150, 150), 2)
    cv2.line(img, tuple(points[n-1]), tuple(points[n*n*(n-1)+n-1]), (150, 150, 150), 2)
    cv2.line(img, tuple(points[n*(n-1)]), tuple(points[n*n*(n-1)+n*(n-1)]), (100, 100, 100), 2)
    cv2.line(img, tuple(points[n*(n-1)+n-1]), tuple(points[n*n*(n-1)+n*(n-1)+n-1]), (100, 100, 100), 2)

    # Blue front face
    cv2.line(img, tuple(points[0]),       tuple(points[n-1]),         (255, 0, 0), 2)
    cv2.line(img, tuple(points[n*(n-1)]), tuple(points[n*(n-1)+n-1]), (128, 0, 0), 2)
    cv2.line(img, tuple(points[0]),       tuple(points[n*(n-1)]),     (200, 0, 0), 2)
    cv2.line(img, tuple(points[n-1]),     tuple(points[n*(n-1)+n-1]), (200, 0, 0), 2)


main()

关于opencv - 相机姿态估计给出错误结果,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/55336759/

相关文章:

从视频源确定房间大小的算法

c++ - openCV 立体匹配算法(stereoBM 和 stereoSGBM)能否与垂直校正图像一起使用

Matlab立体相机校准场景重建错误

python - 通过这段代码,我想收集脸部样本,但它给了错误

python - OpenCV人脸识别程序崩溃

opencv - 旋转矩形 - ANGLE 返回 - Opencv

python - 在python opencv中的多个图像的左下角放置水印

python - 无法在 mac 上的 python 中使用 opencv 读取 xvid 视频

python - macOS : PyQt5 conflict with opencv-python