Creating an essay based on a few given topics is a challenging NLP task. Although several effective methods for this problem, topic-to-essay generation, have appeared recently, there is still much room for improvement, especially in terms of the coverage of the given topics and the coherence of the generated text. In this paper, we propose a novel approach called TegFormer which utilizes the Transformer architecture where the encoder is enriched with domain-specific contexts while the decoder is enhanced by a large-scale pre-trained language model. Specifically, a \emph{Topic-Extension} layer capturing the interaction between the given topics and their domain-specific contexts is plugged into the encoder. Since the given topics are usually concise and sparse, such an additional layer can bring more topic-related semantics in to facilitate the subsequent natural language generation. Moreover, an \emph{Embedding-Fusion} module that combines the domain-specific word embeddings learnt from the given corpus and the general-purpose word embeddings provided by a GPT-2 model pre-trained on massive text data is integrated into the decoder. Since GPT-2 is at a much larger scale, it contains a lot more implicit linguistic knowledge which would help the decoder to produce more grammatical and readable text. Extensive experiments have shown that the pieces of text generated by TegFormer have better topic coverage and higher text coherence than those from SOTA topic-to-essay techniques, according to automatic and human evaluations. As revealed by ablation studies, both the Topic-Extension layer and the Embedding-Fusion module contribute substantially to TegFormer's performance advantage.
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The lack of standardization is a prominent issue in magnetic resonance (MR) imaging. This often causes undesired contrast variations due to differences in hardware and acquisition parameters. In recent years, MR harmonization using image synthesis with disentanglement has been proposed to compensate for the undesired contrast variations. Despite the success of existing methods, we argue that three major improvements can be made. First, most existing methods are built upon the assumption that multi-contrast MR images of the same subject share the same anatomy. This assumption is questionable since different MR contrasts are specialized to highlight different anatomical features. Second, these methods often require a fixed set of MR contrasts for training (e.g., both Tw-weighted and T2-weighted images must be available), which limits their applicability. Third, existing methods generally are sensitive to imaging artifacts. In this paper, we present a novel approach, Harmonization with Attention-based Contrast, Anatomy, and Artifact Awareness (HACA3), to address these three issues. We first propose an anatomy fusion module that enables HACA3 to respect the anatomical differences between MR contrasts. HACA3 is also robust to imaging artifacts and can be trained and applied to any set of MR contrasts. Experiments show that HACA3 achieves state-of-the-art performance under multiple image quality metrics. We also demonstrate the applicability of HACA3 on downstream tasks with diverse MR datasets acquired from 21 sites with different field strengths, scanner platforms, and acquisition protocols.
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Conventional fine-tuning encounters increasing difficulties given the size of current Pre-trained Language Models, which makes parameter-efficient tuning become the focal point of frontier research. Previous methods in this field add tunable adapters into MHA or/and FFN of Transformer blocks to enable PLMs achieve transferability. However, as an important part of Transformer architecture, the power of layer normalization for parameter-efficent tuning is ignored. In this paper, we first propose LN-tuning, by tuning the gain and bias term of Layer Normalization module with only 0.03\% parameters, which is of high time-efficency and significantly superior to baselines which are less than 0.1\% tunable parameters. Further, we study the unified framework of combining LN-tuning with previous ones and we find that: (1) the unified framework of combining prefix-tuning, the adapter-based method working on MHA, and LN-tuning achieves SOTA performance. (2) unified framework which tunes MHA and LayerNorm simultaneously can get performance improvement but those which tune FFN and LayerNorm simultaneous will cause performance decrease. Ablation study validates LN-tuning is of no abundant parameters and gives a further understanding of it.
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卷积神经网络(CNN)通过深度体系结构获得了出色的性能。但是,这些CNN在复杂的场景下通常对图像超分辨率(SR)实现较差的鲁棒性。在本文中,我们通过利用不同类型的结构信息来获得高质量图像,提出了异质组SR CNN(HGSRCNN)。具体而言,HGSRCNN的每个异质组块(HGB)都采用含有对称组卷积块和互补的卷积块的异质体系结构,并以平行方式增强不同渠道的内部和外部关系,以促进富裕类型的较富裕类型的信息, 。为了防止出现获得的冗余功能,以串行方式具有信号增强功能的完善块旨在过滤无用的信息。为了防止原始信息的丢失,多级增强机制指导CNN获得对称架构,以促进HGSRCNN的表达能力。此外,开发了一种平行的向上采样机制来训练盲目的SR模型。广泛的实验表明,在定量和定性分析方面,提出的HGSRCNN获得了出色的SR性能。可以在https://github.com/hellloxiaotian/hgsrcnn上访问代码。
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具有强大学习能力的CNN被广泛选择以解决超分辨率问题。但是,CNN依靠更深的网络体系结构来提高图像超分辨率的性能,这可能会增加计算成本。在本文中,我们提出了一个增强的超分辨率组CNN(ESRGCNN),具有浅层架构,通过完全融合了深层和宽的通道特征,以在单图超级分辨率中的不同通道的相关性提取更准确的低频信息( SISR)。同样,ESRGCNN中的信号增强操作对于继承更长途上下文信息以解决长期依赖性也很有用。将自适应上采样操作收集到CNN中,以获得具有不同大小的低分辨率图像的图像超分辨率模型。广泛的实验报告说,我们的ESRGCNN在SISR中的SISR性能,复杂性,执行速度,图像质量评估和SISR的视觉效果方面超过了最先进的实验。代码可在https://github.com/hellloxiaotian/esrgcnn上找到。
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大多数基于深度学习(DL)的可变形图像登记方法使用卷积神经网络(CNN)来估计移动和固定图像对的位移字段。但是,这要求CNN中的卷积内核不仅从输入中提取强度特征,而且还了解图像坐标系。我们认为,后者的任务对传统CNN来说是具有挑战性的,从而限制了他们在注册任务中的性能。为了解决此问题,我们首先介绍坐标翻译器,坐标转换器是一个可区分的模块,该模块识别固定和移动图像之间的匹配功能,并在不需要训练的情况下输出其坐标对应关系。它卸载了了解CNN的图像坐标系的负担,从而使它们可以专注于特征提取。然后,我们提出了一个新型的可变形注册网络IM2Grid,该网络使用多个坐标转换器与从CNN编码中提取的层次结构特征,并以粗略的方式输出变形字段。我们将IM2Grid与无监督的3D磁共振图像注册的最新DL和非DL方法进行了比较。我们的实验表明,IM2Grid在定性和定量上都优于这些方法。
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深度散列在大规模图像检索中显示了有希望的性能。然而,由\ textBF {d} EEP \ TextBF {n} EETURT \ TextBF {n} etwork(DNN)提取的潜在代码将在二值化过程中不可避免地丢失语义信息,这损害了检索效率并使其充满挑战。虽然许多现有方法进行正规化以缓解量化错误,但我们弄清楚了度量和量化损耗之间的不兼容冲突。公制损失惩罚了阶级距离,以推动远处的不受约束的不同类别。更糟糕的是,它倾向于映射潜在的代码偏离理想的二值化点,并在二值化过程中产生严重的模糊性。基于二进制线性代码的最小距离,提出了提出基于二进制线性代码的最小距离,\ textbf {h}灰色引导\ textbf {h} Inge \ textbf {f}发射(hhf)以避免这种冲突。详细说明,我们仔细设计了一个特定的拐点,依赖于散列长度和类别号来平衡度量学习和量化学习。这种修改可防止网络落入深度散列中的局部度量最佳最小值。在CiFAR-10,CIFAR-100,ImageNet和MS-Coco中的广泛实验表明,HHF始终如一地优于现有技术,并且将其移植到其他方法中是坚固且柔韧的。
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Graph Neural Networks (GNNs) have shown satisfying performance on various graph learning tasks. To achieve better fitting capability, most GNNs are with a large number of parameters, which makes these GNNs computationally expensive. Therefore, it is difficult to deploy them onto edge devices with scarce computational resources, e.g., mobile phones and wearable smart devices. Knowledge Distillation (KD) is a common solution to compress GNNs, where a light-weighted model (i.e., the student model) is encouraged to mimic the behavior of a computationally expensive GNN (i.e., the teacher GNN model). Nevertheless, most existing GNN-based KD methods lack fairness consideration. As a consequence, the student model usually inherits and even exaggerates the bias from the teacher GNN. To handle such a problem, we take initial steps towards fair knowledge distillation for GNNs. Specifically, we first formulate a novel problem of fair knowledge distillation for GNN-based teacher-student frameworks. Then we propose a principled framework named RELIANT to mitigate the bias exhibited by the student model. Notably, the design of RELIANT is decoupled from any specific teacher and student model structures, and thus can be easily adapted to various GNN-based KD frameworks. We perform extensive experiments on multiple real-world datasets, which corroborates that RELIANT achieves less biased GNN knowledge distillation while maintaining high prediction utility.
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To generate high quality rendering images for real time applications, it is often to trace only a few samples-per-pixel (spp) at a lower resolution and then supersample to the high resolution. Based on the observation that the rendered pixels at a low resolution are typically highly aliased, we present a novel method for neural supersampling based on ray tracing 1/4-spp samples at the high resolution. Our key insight is that the ray-traced samples at the target resolution are accurate and reliable, which makes the supersampling an interpolation problem. We present a mask-reinforced neural network to reconstruct and interpolate high-quality image sequences. First, a novel temporal accumulation network is introduced to compute the correlation between current and previous features to significantly improve their temporal stability. Then a reconstruct network based on a multi-scale U-Net with skip connections is adopted for reconstruction and generation of the desired high-resolution image. Experimental results and comparisons have shown that our proposed method can generate higher quality results of supersampling, without increasing the total number of ray-tracing samples, over current state-of-the-art methods.
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Panoptic Part Segmentation (PPS) unifies panoptic segmentation and part segmentation into one task. Previous works utilize separated approaches to handle thing, stuff, and part predictions without shared computation and task association. We aim to unify these tasks at the architectural level, designing the first end-to-end unified framework named Panoptic-PartFormer. Moreover, we find the previous metric PartPQ biases to PQ. To handle both issues, we make the following contributions: Firstly, we design a meta-architecture that decouples part feature and things/stuff feature, respectively. We model things, stuff, and parts as object queries and directly learn to optimize all three forms of prediction as a unified mask prediction and classification problem. We term our model as Panoptic-PartFormer. Secondly, we propose a new metric Part-Whole Quality (PWQ) to better measure such task from both pixel-region and part-whole perspectives. It can also decouple the error for part segmentation and panoptic segmentation. Thirdly, inspired by Mask2Former, based on our meta-architecture, we propose Panoptic-PartFormer++ and design a new part-whole cross attention scheme to further boost part segmentation qualities. We design a new part-whole interaction method using masked cross attention. Finally, the extensive ablation studies and analysis demonstrate the effectiveness of both Panoptic-PartFormer and Panoptic-PartFormer++. Compared with previous Panoptic-PartFormer, our Panoptic-PartFormer++ achieves 2% PartPQ and 3% PWQ improvements on the Cityscapes PPS dataset and 5% PartPQ on the Pascal Context PPS dataset. On both datasets, Panoptic-PartFormer++ achieves new state-of-the-art results with a significant cost drop of 70% on GFlops and 50% on parameters. Our models can serve as a strong baseline and aid future research in PPS. Code will be available.
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