محتوى الدورة
Image understanding: supervised learning: regression: iterative least-squares, gradient descent Image understanding: supervised learning: classification: support vector machine: nonlinear SVM Image understanding: supervised learning: classification: support vector machine: slack variables Image understanding: supervised learning: classification: support vector machine: linear SVM Image understanding: supervised learning: classification: support vector machine: maximizing margins Image understanding: supervised learning: classification: support vector machine: margins Image understanding: supervised learning: classification: linear: multiclass classifier Image understanding: supervised learning: classification: linear: LDA implementation Image understanding: supervised learning: classification: linear: receiver operating curve (ROC) Image understanding: supervised learning: classification: linear: linear discriminant analysis Image understanding: supervised learning: classification: linear: logistic regression Image understanding: supervised learning: classification: linear: least-squares classifiers Image understanding: supervised learning: classification: artificial neural networks: neurons Image understanding: supervised learning: regression: iterative least-squares, conjugate gradient Image understanding: supervised learning: regression: iterative least-squares, steepest descent, imp Image understanding: supervised learning: regression: iterative least-squares, steepest descent Image understanding: supervised learning: regression: iterative least-squares, quadratic form Image understanding: supervised learning: regression: iterative least-squares, intuition Image understanding: supervised learning: regression: least-squares, summary Image understanding: supervised learning: regression: total least-squares: line fit, implement Image understanding: supervised learning: regression: total least-squares: line fitting, ax + by = 0 Image understanding: supervised learning: regression: total least-squares: line fitting Image understanding: supervised learning: regression: weighted least-squares: line fit, implement Image understanding: supervised learning: regression: weighted least-squares: line fitting Image understanding: unsupervised learning: expectation/maximization: E-step Closing: parting thoughts Image understanding: unsupervised learning: tSNE: implementation Image understanding: unsupervised learning: t-distributed stochastic neighbor embedding (tSNE) Image understanding: unsupervised learning: principal component analysis (PCA): eigenfaces Image understanding: unsupervised learning: principal component analysis (PCA): computation Image understanding: unsupervised learning: principal component analysis (PCA): implementation Image understanding: unsupervised learning: principal component analysis (PCA): eigenvectors Image understanding: unsupervised learning: principal component analysis (PCA): covariance matrix Image understanding: unsupervised learning: principal component analysis (PCA): canonical basis Image understanding: unsupervised learning: expectation/maximization: EM implementation Image understanding: unsupervised learning: expectation/maximization: M-step Image understanding: supervised learning: regression: weighted least-squares: line fitting Image understanding: unsupervised learning: expectation/maximization: EM Image understanding: unsupervised learning: clustering: k-means implementation Image understanding: unsupervised learning: clustering: k-means Image understanding: supervised learning: classification: ANN: convolutional Image understanding: supervised learning: classification: ANN: backpropagation Image understanding: supervised learning: classification: ANN: universal approximation theorem Image understanding: supervised learning: classification: artificial neural networks: xor + hidden Image understanding: supervised learning: classification: artificial neural networks: hidden layers Image understanding: supervised learning: classification: artificial neural networks: xor Image understanding: supervised learning: classification: artificial neural networks: sigmoid Image understanding: supervised learning: classification: artificial neural networks: delta rule Image formation: artifacts: chromatic aberrations and noise Image filtering: space and frequency: Fourier, 1-D Image filtering: space and frequency: canonical basis Image filtering: convolution: separable convolution Image filtering: convolution: convolution, 2-D Image filtering: convolution: linear time-invariant systems, 2-D Image filtering: convolution: convolution, 1-D Image filtering: convolution: linear time-invariant systems, 1-D Image filtering: convolution: discrete-time signals and systems Image formation: summary Image formation: pixels: JPEG compression Image formation: pixels: lens distortion Image filtering: space and frequency: complex exponential Image formation: pixels: displays Image formation: pixels: color filter array Image formation: lenses: exposure Image formation: lenses: depth of focus Image formation: lenses: thin lens Image formation: pinhole camera: perspective projection, 3-D Image formation: pinhole camera: perspective projection, 2-D generalized Image formation: pinhole camera: perspective projection, 2-D variant Image formation: pinhole camera: perspective projection, 2-D Image formation: pinhole camera: camera obscura Image formation: pinhole camera: images Image analysis: motion: differential motion, implementation Image understanding: supervised learning: regression: least-squares: parabola fitting Image understanding: supervised learning: regression: least-squares: line fitting, y = mx + b Image understanding: supervised learning: regression: least-squares: line fitting, y = mx Image understanding: supervised learning: regression: least-squares: line fitting Image understanding: overview Image analysis: homography: planar homography, application Image analysis: homography: planar homography Image analysis: stereo: epipolar constraints Image analysis: stereo: depth from stereo Image analysis: motion: feature tracking, implementation Image analysis: motion: feature tracking Introduction: welcome Image analysis: motion: differential motion Image filtering: features: histogram of gradients (HOG) Image filtering: features: line detection Image filtering: features: edge detection Image filtering: features: edges Image filtering: pyramids: Laplacian pyramid Image filtering: pyramids: Gaussian pyramid Image filtering: space and frequency: discrete to discrete sampling Image filtering: space and frequency: continuous to discrete sampling, frequency Image filtering: space and frequency: continuous to discrete sampling, space Image filtering: space and frequency: Fourier, 2-D

للحصول على شهادة

  • 1- التسجيل
  • 2- مشاهدة الكورس كاملا
  • 3- متابعة نسبة اكتمال الكورس تدريجيا
  • 4- بعد الانتهاء تظهر الشهادة في الملف الشخصي الخاص بك