In recent years, with the rapid development of digital printing technology, an increasing number of counterfeit products have entered the market. The anti-counterfeiting technique for QR Codes has been attracting increasing attention nowadays. There exist many image inpainting methods that can be applied in the image restoration field. Some image completion methods may restore coating QR Code images to a point where the covered digital number underneath is revealed even though the original coating QR Code has not been scratched off. In this paper, we extend the pluralistic image completion (PIC) method to scratched coating QR Code image restoration. Based on the binary characteristic of QR Codes, we present a specific type of deep learning model for scratched coating QR Code image completion. Experimental results demonstrate that the extended PIC is an effective approach to the restoration of scratched coating QR Code images.
Taking the Jurong Dongshan River as an illustrative case, we employed a Dajiang Phantom 4 RTK SE unmanned aerial vehicle (UAV) for single-lens tilt photography. Our investigation focused on examining the influence of varying flight altitudes (FA: 30 m, 60 m and 90 m) and the configuration of photo control points on two-dimentional (2D) or three-dimensional (3D) mapping accuracy of river embankments, slopes, and hydraulic structures, as well as the analysis of outcomes of 2D and 3D modeling under different FA conditions augmented with supplementary photographs. Our observations revealed that the longitude and elevation accuracy at 30 m FA were higher without photo control operations compared to those at 60 m and 90 m FA, and accuracy diminished as FA increased. Specifically, the longitude accuracy of the embankment photo control points exceeded that of the slope photo control points, whereas the elevation accuracy of the embankment photo control points was superior at FAs of 60 m and 90 m. The geographical location deviation of hydraulic structures (irrigation intake gates) in the 2D model was larger than that obtained in the 3D model. Notably, the incorporation of additional detailed photographs significantly augmented the modeling efficacy of UAV aerial survey data, especially in capturing intricate plant and slope details. It is recommended that the Phantom 4 RTK SE be used at FA of 90 m to establish a foundational channel model, along with capture of additional detailed photographs of crucial structures, slopes, etc., and obtaining geographic location information in 3D Models.
The preparation of active food packaging materials with both high gas barrier and antioxidant properties remains a great challenge. Hemicellulose is an abundant raw material with excellent oxygen barrier performance and biodegradability, and tea polyphenols (TPs) are natural antioxidants with the function of reducing water sensitivity of polysaccharide-based films. Herein, a synergistic strategy is reported for the preparation of active-controlled food packaging material by incorporating TP into the poly(vinyl alcohol) hemicellulose (PVA/HC) matrix. The obtained film with 5 wt% addition of TP exhibited the highest tensile strength of 41.09 MPa, which was increased by 84% than that of the PVA/HC film. Meanwhile, water vapor permeability was decreased by 25% to 7.39 × 10−12 g⋅cm/(cm2⋅s⋅Pa) compared to a PVA/HC film. Moreover, the addition of TP improved the thermal stability of the (PVA/HC/TP)n film. The outstanding packaging performances were attributed to the robust hydrogen bonding between TP and the PVA/HC matrix as demonstrated by Fourier transform infrared spectroscopy. The DPPH free radical scavenging of (PVA/HC/TP)15 films reached 87.99%, and the film also exhibited enhanced inhibition efficiency against the microorganism E. coli. Compared with the polyethylene plastic wrap, the film showed excellent food packaging applicability by preventing air oxidation of fresh-cut potato. This study sheds light on a design strategy for active packaging films using a natural substance and easily available biomass.
Deep learning (DL) has advanced computer-aided diagnosis, yet the limited data available at local medical centers and privacy concerns associated with centralized AI approaches hinder collaboration. Federated learning (FL) offers a privacy-preserving solution by enabling distributed DL training across multiple medical centers without sharing raw data. This article reviews research conducted from 2016 to 2024 on the use of FL in cancer detection and diagnosis, aiming to provide an overview of the field’s development. Studies show that FL effectively addresses privacy concerns in DL training across centers. Future research should focus on tackling data heterogeneity and domain adaptation to enhance the robustness of FL in clinical settings. Improving the interpretability and privacy of FL is crucial for building trust. This review promotes FL adoption and continued research to advance cancer detection and diagnosis and improve patient outcomes.
Color accuracy in conventional and digital printing processes relies on press characterization to establish the relationship between input device values and output colorimetric or spectral reflectance values. Conventional models, such as Murray–Davies, Clapper–Yule, Yule–Nielsen, and Yule–Nielsen modified spectral Neugebauer, are renowned for providing accurate chromatic and spectral predictions. However, they fall short of accounting for the effects of black ink use and struggle to predict light hues accurately. In order to predict more accurately the color fingerprint, spectral reflectance, of halftone printed images, this study introduces a novel machine-learning-based deep neural network combined with the improved particle swarm optimization algorithm. This enables implementing a spectral reflectance color prediction model for CMYK printing, which eliminates the need to adjust for dot gain during printing. By evaluating this model on a lithographic offset press, we demonstrate its superior performance evidenced by significantly lower root mean square error and color difference (ΔE ∗ 00) values compared to existing methods. This approach minimizes color deviations during printing and reduces material and energy consumption, thereby ultimately enhancing the quality of printed materials.
This study proposes an improved spectral reflectance reconstruction method to convert the response data captured by RGB digital cameras to the object surface spectral reflectance. Additionally, a system noise model is also proposed, which incorporates both signal-dependent and signal-independent components, thus rendering it more closely aligned with real-world conditions. Image data captured with RGB digital cameras under multiple LED light sources, and the inverse distance of the Euclidean distance between the training sample test samples in RGB color space is used as a weighting coefficient to reconstruct the spectral reflectance of the object surface, as accurately as possible. Experimental results show that the proposed method has better reconstruction accuracy than existing methods. The root mean square error values and the reconstructed goodness of fit coefficient higher than 0.9958 indicate that the spectral reconstruction performance has greatly improved compared to existing methods, thus proving the validity of the proposed weighting method.
Deep neural networks (DNNs) have heavily relied on traditional computational units, such as CPUs and GPUs. However, this conventional approach brings significant computational burden, latency issues, and high power consumption, limiting their effectiveness. This has sparked the need for lightweight networks such as ExtremeC3Net. Meanwhile, there have been notable advancements in optical computational units, particularly with metamaterials, offering the exciting prospect of energy-efficient neural networks operating at the speed of light. Yet, the digital design of metamaterial neural networks (MNNs) faces precision, noise, and bandwidth challenges, limiting their application to intuitive tasks and low-resolution images. In this study, we proposed a large kernel lightweight segmentation model, ExtremeMETA. Based on ExtremeC3Net, our proposed model, ExtremeMETA maximized the ability of the first convolution layer by exploring a larger convolution kernel and multiple processing paths. With the large kernel convolution model, we extended the optic neural network application boundary to the segmentation task. To further lighten the computation burden of the digital processing part, a set of model compression methods was applied to improve model efficiency in the inference stage. The experimental results on three publicly available datasets demonstrated that the optimized efficient design improved segmentation performance from 92.45 to 95.97 on mIoU while reducing computational FLOPs from 461.07 MMacs to 166.03 MMacs. The large kernel lightweight model ExtremeMETA showcased the hybrid design’s ability on complex tasks.
This article resolutely uses the concept of feature fusion to establish a deep learning model that can quickly recognize objects and complete an anti-counterfeit label recognition system. The receiver combines the training of the technology acceptance model (TAM) to evaluate the satisfaction of users in completing the anti-counterfeit label classification training. In this study, the fusion-based recognition program was employed to extract the feature sets of different categories of anti-counterfeit labels based on the operation of multilayer convolutional neural networks (CNNs) with different depth models. Using neighborhood components analysis, ten important sets of features from different CNN models were selected and reorganized parallelly into a new small-scale feature fusion dataset. By using naive Bayes and support vector machine methods, efficient classification of wine label image feature datasets after fusion was achieved. The feature fusion anti-counterfeiting label recognition system proposed in this article had a maximum recognition accuracy of 99.29% and a data reduction compression ratio of about 1/50. In addition to reducing training time, it maintained a high level of accuracy. This study established a TAM with the advantage of a feature fusion anti-counterfeit label recognition system. The model was tested on 100 consumers, and a satisfaction evaluation and validation analysis with partial least squares structural equation modeling were completed thereafter. The efficiency of the fusion-based deep learning model met the level of consumer satisfaction. This will be beneficial for educating consumers to use and enhance their willingness to promote and repurchase wine products in the future.
With the advancement of digital printing technology, the rapid detection of inkjet defects have become critical research areas in OnePass inkjet printing. These defects can disrupt the continuity and smoothness of the image, leading to a decrease in print quality. To overcome these issues, this study proposed an inkjet defect detection method based on printing characterization. Image processing technology was used to obtain the printing characterization information of the printer and extract the information of ink point positions. Optimizing the allocation matrix through Sinkhorn algorithm and combining it with Robust Point Matching algorithm to construct the transmission objective function was accomplished to obtain the optimal point set matching model. This model serves two purposes: diagnosing the nozzle function status of each printhead and quantifying the alignment errors between printheads. Experiments demonstrated the high precision of this detection method. We analyzed the impact of related parameters on the model’s performance and assessed changes in image quality under different alignment errors. This approach provides a new solution for optimizing printer maintenance.
In traditional printing enterprises, production scheduling is highly complex. This is due to the wide variety of products, scattered processes, uneven automation levels, frequent changes in plans, and low standardization. These factors turn scheduling into a multi-objective optimization problem with multiple constraints. Based on flexible demand for production scheduling in an intelligent printing workshop, this study integrates the learning effect of production personnel with the static scheduling problem found in printing workshops. Under the constraints of resource, operation, and process layers, this study establishes a multi-objective static scheduling optimization model for printing workshops, with the goals of minimizing the penalties for makespan of orders, total load time of equipment, maximum load time of bottleneck equipment, total production cost of orders, total quality failure rate of orders and total order delay/early completion time; and proposes an improved NSGA-II algorithm that is suitable for solving complex large-scale scheduling problems existing in printing workshops. The effectiveness and rationality of design model and algorithm are verified by combining with Kacem dataset, Brandimarte standard examples and actual enterprise cases.