The field of invention relates to the method of data acquisition in imaging systems.
Motivated by the predicament brought by the high-sampling-rate operation, our invention is a pixel super-resolution (pixel-SR) technique that enhances the pixel resolution (i.e. anti-aliasing) of high-speed laser scanning imaging (e.g. time-stretch imaging or free-space angular-chirp-enhanced delay (FACED) imaging) at the lower sampling rate, which is easily supported by any commercial-grade digitizers. It is based upon the general concept of pixel-SR in which high-resolution (HR) image information can be restored from multiple subpixel-shifted, low-resolution (LR) images captured by a lower sampling rate. Different from prior art in pixel-SR techniques, our invention harnesses the fact that subpixel shift of consecutive line scans (during imaging) is naturally generated by the mismatch between laser-scan repetition frequency and sampling frequency of the back-end digitizer—a feature appeared in all types of laser-scanning imaging modalities. Therefore, it requires no active synchronized control of illumination or detection for precise sub-pixel shift operation at an ultrafast rate. Unlike any classical pixel-SR imaging techniques, our invention does not require any additional hardware for controlled subpixel-shift motion (e.g. detector translation, illumination beam steering), or complex image pixel registration algorithms for uncontrolled motions, thanks to the highly precise and reconfigurable pixel drifting. Without sacrificing spatial resolution at the high-speed scanning rate, our invention could be beneficial to any laser-scanning imaging applied in ultrafast or/and high-throughput imaging applications, ranging from surface inspection and quality control in industrial manufacturing (e.g. machine vision for web-inspection, semiconductor VLSI chip manufacturing), non-contact metrology, to single-cell analysis in basic life-science (in biomedical and environmental studies) and clinical diagnosis (e.g. cell-based assay and tissue micro-array (TMA), whole slide imaging (WSI)).
Enhances or restore the pixel resolution of high-speed laser scanning imaging even at the lower sampling rate—for ultrafast imaging (at a line-scan rate beyond sub-MHz) without compromising spatial resolution.
A versatile pixel-SR technique in that subpixel shift of consecutive line scans (during imaging) is naturally generated by the mismatch between laser-scan repetition frequency and sampling frequency of the digitizer—applicable to 1D, 2D, and 3D laser-scanning imaging strategies.
All-passive pixel-SR technique—does not require any additional hardware for controlled subpixel-shift motion or complex image pixel registration algorithms for uncontrolled motions.
Highly precise and reconfigurable pixel drifting and unique pixel registration algorithm.
Our invention is a pixel-SR technique that enhances the pixel resolution (i.e. anti-aliasing) of high-speed laser scanning imaging (e.g. time-stretch imaging or free-space angular-chirp-enhanced delay (FACED) imaging) at the lower sampling rate, which is easily supported by any commercial-grade digitizers. It can be applicable to 1D [1], 2D [5] and 3D [6] laser-scanning strategies (
In one embodiment, the 1D line-scanning [1] of the unidirectional motion of the specimen [3], e.g. biological cells in microfluidic flow [2]. The 2D image [11] is reconstructed by digitally stacking the captured line-scans [1], so that the fast axis [4] of the resultant 2D image [11] is the line-scan direction, and the slow axis [2] corresponds to the specimen motion direction. In one embodiment, the 2D line-scanning [5] is performed by scanning the line-scan beam along the slow axis [8] whereas the specimen [3] is at fixed position or in slow motion compared to the line-scanning speed along the slow axis [8]. The 2D image [11] is reconstructed by digitally stacking the captured line-scans [5]. In one embodiment, the 3D line-scanning [6] is performed by scanning the line-scan beam in 2D, i.e. along both the slow [6] and axial axis [8]. The specimen [3] is at fixed position or in slow motion compared to the line-scanning speed along the slow [6] and axial axis [8].
For the sake of demonstration, we consider the most common form of laser-scanning imaging which is 1D line-scanning [1] imaging. It has been proven in a broad range of applications, from flow cytometry to surface inspection, i.e. on-the-fly line-scan imaging of the specimen [3] (
is as small as in the order of 10−2 in typical ultrafast laser-scanning imaging configuration operating beyond MHz, e.g. time-stretch imaging or FACED imaging. Ideally, if the sampling clock frequency f of the digitizer is locked to the laser pulse repetition rate F, the line scans will perfectly align along the slow axis. In practice, the average number of pixels per line scan (=f/F) is not an integer. The line-scans [1] appears to “drift” along the slow axis [2], and hence the 2D image [11] appears to be highly warped especially at low sampling rate (
where integer N is the number of pixels per line scan rounded off to the nearest integer. It can be shown that |δx|≤Δx/2. The warp angle is thus given as tan θ=δx/Δy, as illustrated in
Our invention harnesses the warping effect for creating the relative “subpixel shift” on both the fast axes [4] and slow axes [2], and thus restoring a high-resolution 2D image [12] (
where M is the number of line scans of the warped image, function Wθ−1[·] is the image dewarp filter at angle θ. Note that in the case of 3D laser-scanning, the warp angle θ along the axial-slow-axis plane (i.e. [4] and [8] in
where the integer N is the number of pixels of each line scan.
Note that interpolation of neighbouring line-scans [1] effectively enlarges the pixel size along the slow axis and reduces the effective imaging line-scan rate. As shown in
Δu=Δx cos θ
Δv=Δy(cos θ)−1. (5)
When we consider the ratio of pixel size reduction, given as
the resolution improvement in the demonstration is particularly significant for highly elongated pixels [Eq. (1) and
As mentioned earlier that our invention is applicable to any laser-scanning imaging, we here for the sake of proof-of-principle, demonstrate pixel-SR for ultrafast laser-scanning time-stretch imaging with improved spatial resolution. We choose a class of phytoplankton, scenedesmus [3] (Carolina Biological, USA), for its distinct morphological property. In the experiment, individual scenedesmus [3] were loaded into the channel [8] at an ultrafast linear flow velocity of 1 ms−1 to 3 ms−1. The time-stretch waveforms were then digitized by a real-time oscilloscope with adjustable sampling rate between 5 GSa/s and 80 GSa/s. At the highest possible sampling rate (80 GSa/s), the cellular images comes with sharp outline and visible intracellular content (second column,
Taking advantage of HR image restoration, ultrafast pixel-SR laser-scanning imaging such as time-stretch imaging is particularly useful to enable label-free, high-throughput cellular classification and analysis based on the morphological features, which is not possible with standard flow cytometry. Here, we performed classification of sub-types of scenedesmus [3] (n=5,000) imaged by our optofluidic pixel-SR time-stretch imaging system (sampled at 5 GSa/s). The images of individual colonies are reconstructed by pixel-SR algorithm in the high-performance cluster. We first retrieved two label-free metrics of single cells: opacity and area from the restored pixel-SR frames. These spatially-averaged metrics represent the optical density (attenuation) and the size of the scenedesmus colonies [3] respectively. The cell images were automatically classified into three groups by K-means clustering. Based on the scatter plot of these two parameters (
As mentioned earlier that a practical advantage of pixel-SR for high-speed laser-scanning is that it relaxes the stringent requirement on the extremely high sampling rate (40 GSa/s or beyond), which can only be offered by the state-of-the-art and costly oscilloscopes. Ultrafast data acquisition with such high-end oscilloscopes conventionally comes with limited memory buffers. Not only does it hinder continuous, real-time on-the-fly data storage, but also high-throughput post-processing and analytics. Our invention offers an effective approach to address this limitation by capturing the ultrafast laser-scanning images at a lower sampling rate, yet without compromising the image resolution. More significantly, unlike the use of high-end oscilloscope in the previous experiments, the lower-sampling-rate digitizer can readily be equipped with an FPGA, capable of continuous and reconfigurable streaming of enormous time-stretch image raw data to the distributed computer storage cluster. To demonstrate the applicability of pixel-SR to such a high-throughput data processing platform, we performed continuous real-time monitoring of water-in-oil emulsion microdroplet generation (at a velocity as high as 0.3 ms−1) in the microfluidic channel device [8]. The time-stretch image signal is continuously recorded at the sampling rate of 3.2 GSa/s (
Similar to the previous experiments using the oscilloscope, we also observed that the raw time-stretch image is highly warped because of the unlocked clocking between the laser and the digitizer (
As mentioned before, asynchronous sampling of the ultrafast image signal gives rises to relative subpixel alignment of the 1D line-scans [1], which can be precisely determined by our pixel registration algorithm. Our invention can also be applied to synchronous digitizer locked to the ultrafast line-scan rate, so that the subpixel alignment can be precisely predetermined in a reconfigurable manner. This can be realized by locking the digitizer sampling is clock to the laser pulse trigger with a phase-lock loop (PLL) at a fractional ratio P/Q. For example, if the digitizer clock is locked to the pulsed laser at ratio P/Q=502/5=1002/5, the apparent number of pixels per line-scan is N=100. However, the relative subpixel alignment of the k-th line-scans can be precisely determined at dk=δx×k=(2k mod 5)/5={+0.0, +0.4, −0.2, +0.2, +0.0, +0.4, . . . } to provide five times of apparent number of pixels for each line-scan (i.e. N=500). The accumulated subpixel positions for different P/Q values are shown in PhaseLock. This ratio can be precisely adjusted in hardware (e.g. by the PLL) to control the density of the subpixel locations. It is noted that when synchronous phase-locking is implemented, energy minimization of foreground (Eq. 4) can be bypassed.
It will thus be seen that the objects set forth above, among those made apparent from the preceding description, are efficiently attained and, because certain changes may be made in carrying out the above method and in the construction(s) set forth without departing from the spirit and scope of the invention, it is intended that all matter contained in the above description and shown in the accompanying drawings shall be interpreted as illustrative and not in a limiting sense.
It is also to be understood that the following claims are intended to cover all of the generic and specific features of the invention herein described and all statements of the scope of the invention which, as a matter of language, might be said to fall therebetween.
This application is the U.S. national stage application of International Patent Application No. PCT/CN2017/103863, filed Sep. 28, 2017, which claims the benefit of U.S. Provisional Application Ser. No. 62/400,926, filed Sep. 28, 2016, the disclosure of each of which is incorporated herein by reference in its entirety.
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PCT/CN2017/103863 | 9/28/2017 | WO | 00 |
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WO2018/059469 | 4/5/2018 | WO | A |
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