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Reconstruction with Adaptive Feature-specific Imaging Jun Ke 1 and Mark A. Neifeld 1,2 1 Department of Electrical and Computer Engineering, 2 College of Optical Sciences University of Arizona Frontiers in Optics 2007
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Outline Frontiers in Optics 2007 Motivation for FSI and adaptation. Adaptive FSI using PCA/Hadamard features. Adaptive FSI in noise. Conclusion.
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Motivation - FSI Reconstruction with Feature-specific Imaging (FSI) : Frontiers in Optics 2007 FSI benefits: Lower hardware complexity Smaller equipment size/weight Higher measurement SNR High data acquisition rate Lower operation bandwidth Less power consumption Reconstruction matrix M (nxm) object object estimate DMD Imaging optics single detector feature Sequential architecture: Parallel architecture: LCD M (nxm)
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Motivation - Adaptation Frontiers in Optics 2007 Acquire feature measurements sequentially Use acquired feature measurements and training data to adapt the next projection vector The design of projection vector effects reconstruction quality. Estimation Poorly designed projection vectors Testing sample Training samples Projection axis 2 Static PCA Projection axis 1 Using PCA projection as example Well designed projection vectors Adaptive PCA Estimation Projection axis 2 Projection value Training samples for 2 nd projection vector Projection axis 1
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Frontiers in Optics 2007 Object estimate y i = f i T x Calculate f i+1 Reconstruction Object x Update A i to A i+1 according to y i Computational Optics Calculate f 1 R i+1 Calculate R 1 from A 1 Adaptive FSI (AFSI) – PCA: i: adaptive step index A i : i th training set R i : autocorrelation matrix of A i f i : dominate eigenvector of A i y i : feature value measured by f i High diversity of training data helps adaptation PCA-Based AFSI Testing sample K (1) nearest samples Projection axis Testing sample K (1) nearest samples Selected samples According to 1 st feature According to 2 nd feature K (2) nearest samples Projection axis 2 Projection axis 1
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Object examples (32x32): Reconstructed object: RMSE: Feature measurements: where, is the total # of features PCA-Based AFSI Frontiers in Optics 2007 Number of training objects: 100,000 Number of testing objects: 60
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RMSE reduces using more features RMSE reduces using AFSI compare to static FSI Improvement is larger for high diversity data RMSE improvement is 33% and 16% for high and low diversity training data, when M = 250. Frontiers in Optics 2007 AFSI – PCA: PCA-Based AFSI Reconstruction from static FSI (M = 100) Reconstruction from AFSI (M = 100) K increases
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Projection vector’s implementation order is adapted. Frontiers in Optics 2007 x i (mean) : average vector of A i f i : dominant Hadamard vector for A i AFSI – Hadamard: Hadamard-Based AFSI Object estimate y iL+j = f iL+j T x (j=1,…,L) Choose f iL+1 ~ f (i+1)L Reconstruction Object x Update A i to A i+1 according to y iL+j Computational Optics Choose f 1 ~f L x i+1 (mean) x 1 (mean) Sort Hadamard bases Selected samples K (1) nearest samples testing sample projection axis 1 K (1) nearest samples testing sample projection axis 2 K(2) nearest samples sample mean First 5 Hadamard basis ←Static FSI AFSI→ according to 1st feature according to 2nd feature sample mean projection axis 1
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RMSE reduces in AFSI compared with static FSI RMSE improvement is 32% and 18% for high and low diversity training data, when M = 500 and L = 10. AFSI has smaller RMSE using small L when M is also small AFSI has smaller RMSE using large L when M is also large Hadamard-Based AFSI Frontiers in Optics 2007 AFSI – Hadamard: Reconstruction from adaptive FSI Reconstruction from static FSI K increases L decreases L increases
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Hadamard-Based AFSI – Noise Frontiers in Optics 2007 AFSI – Hadamard: Hadmard projection is used because of its good reconstruction performance Feature measurements are de-noised before used in adaptation Auto-correlation matrix is updated in each adaptation step Wiener operator is used for object reconstruction Object estimate y iL+j = f iL+j T x+n iL+j (j = 1,2,…L) Choose f iL+1 ~f (i+1)L Reconstruction Object x Update A i to A i+1 according to Computational Optics Choose f 1 ~f L x i+1 (mean) Calculate x 1 (mean) from de- noising y iL+j Calculate R i for A i T : integration time σ 0 2 = 1 Sort Hadamard bases Sort
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Frontiers in Optics 2007 RMSE in AFSI is smaller than in static FSI RMSE is reduced further by modifying R x in each adaptation step RMSE improvement is larger using small L when M is also small RMSE is small using large L when M is also large Hadamard-Based AFSI – Noise High diversity training data; σ 0 2 = 1 T : integration time/per feature σ 0 2 = 1 detector noise variance σ 2 = σ 0 2 /T High diversity training data; σ 0 2 = 1 K increases L decreases L increases
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T : integration time/per feature; M 0 : the number of features Total feature collection time = T × M 0 RMSE reduces as T increases High reconstruction quality requirement needs longer total feature collection time To achieve each RMSE requirement, there is a minimum total feature collection time. Hadamard-Based AFSI – Noise Frontiers in Optics 2007 High diversity training data; σ 0 2 = 1
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Conclusion Frontiers in Optics 2007 Noise free measurements: PCA-based and Hadmard-based AFSI system are presented AFSI system presents lower RMSE than static FSI system Noisy measurements: Hadamard-based AFSI system in noise is presented AFSI system presents smaller RMSE than static FSI system There is a minimum total feature collection time to achieve a reconstruction quality requirement
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