The de-facto approach to many vision tasks is to start from pretrained visual representations, typically learned via supervised training on ImageNet. Recent methods have explored unsupervised pretraining to scale to vast quantities of unlabeled images. In contrast, we aim to learn high-quality visual representations from fewer images. To this end we revisit supervised pretraining, and seek dataefficient alternatives to classification-based pretraining. We propose VirTex -a pretraining approach using semantically dense captions to learn visual representations. We train convolutional networks from scratch on COCO Captions, and transfer them to downstream recognition tasks including image classification, object detection, and instance segmentation. On all tasks, VirTex yields features that match or exceed those learned on ImageNet -supervised or unsupervised -despite using up to ten times fewer images.
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Vision-Language Transformers can be learned without human labels (e.g. class labels, bounding boxes, etc). Existing work, whether explicitly utilizing bounding boxes or patches, assumes that the visual backbone must first be trained on ImageNet class prediction before being integrated into a multimodal linguistic pipeline. We show that this is not necessary and introduce a new model Vision-Language from Captions (VLC) built on top of Masked Auto-Encoders that does not require this supervision. In fact, in a head-to-head comparison between ViLT, the current state-of-the-art patch-based vision-language transformer which is pretrained with supervised object classification, and our model, VLC, we find that our approach 1. outperforms ViLT on standard benchmarks, 2. provides more interpretable and intuitive patch visualizations, and 3. is competitive with many larger models that utilize ROIs trained on annotated bounding-boxes.
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The availability of large-scale image captioning and visual question answering datasets has contributed significantly to recent successes in vision-and-language pretraining. However, these datasets are often collected with overrestrictive requirements inherited from their original target tasks (e.g., image caption generation), which limit the resulting dataset scale and diversity. We take a step further in pushing the limits of vision-and-language pretraining data by relaxing the data collection pipeline used in Conceptual Captions 3M (CC3M) [70] and introduce the Conceptual 12M (CC12M), a dataset with 12 million image-text pairs specifically meant to be used for visionand-language pre-training. We perform an analysis of this dataset and benchmark its effectiveness against CC3M on multiple downstream tasks with an emphasis on long-tail visual recognition. Our results clearly illustrate the benefit of scaling up pre-training data for vision-and-language tasks, as indicated by the new state-of-the-art results on both the nocaps and Conceptual Captions benchmarks. 1
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我们提出了Clip-Lite,一种通过与文本注释的特征对齐方式进行视觉表示学习的信息有效方法。与先前提出的剪辑模型相比,剪辑液在优化其对比学学习目标期间只需要一个负图像文本样本对。我们通过利用信息有效的较低限制来实现这一点,以最大化两个输入模态之间的相互信息。这允许剪辑Lite培训,在获得比夹子的更好的性能的同时具有显着减少的数据和批量尺寸。我们通过在Coco-Tablions数据集上预先绘制来评估剪贴画并对其他数据集进行测试传输。 Clip-Lite在Pascal VOC分类上获得+ 15.4%的映射绝对增益,并在ImageNet上获得A + 22.1%的前1个精度增益,同时与其他更复杂,文本监督模型相当或优越。 Clip-Lite还优于剪辑图像和文本检索,零拍分类和视觉接地。最后,通过在表示学习期间执行显式图像文本对齐,我们显示Clip-Lite可以利用语言语义来鼓励可以在下游任务中使用的无偏见的视觉表示。
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在过去的几年中,基于自我注意力的变压器模型一直在主导许多计算机视觉任务。它们的出色模型质量在很大程度上取决于标记过多的图像数据集。为了减少对大型标记数据集的依赖,基于重建的掩盖自动编码器正在获得流行,这些自动编码器从未标记的图像中学习了高质量的可转移表示形式。出于同样的目的,最近弱监督的图像预处理方法探索了图像随附的文本字幕的语言监督。在这项工作中,我们提出了对语言辅助代表的预读图像,称为米兰。我们的预处理目标不是预测原始像素或低级别的特征,而是用使用字幕监督获得的大量语义信号来重建图像特征。此外,为了适应我们的重建目标,我们提出了更有效的促使解码器体系结构和语义意识到的掩码采样机制,从而进一步推进了预告片模型的传输性能。实验结果表明,米兰的精度比以前的工作更高。当掩盖的自动编码器在ImagEnet-1K数据集上进行了预估计并以224x224的输入分辨率进行了填充时,米兰在VITB/16上的前1位准确性达到了85.4%,使以前的先前最先前的艺术品达到1%。在下游的语义分割任务中,米兰在ADE20K数据集上使用VIT-B/16骨架达到52.7 MIOU,表现优于先前的蒙版预读结果4分。
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Pretraining is a dominant paradigm in computer vision. Generally, supervised ImageNet pretraining is commonly used to initialize the backbones of person re-identification (Re-ID) models. However, recent works show a surprising result that CNN-based pretraining on ImageNet has limited impacts on Re-ID system due to the large domain gap between ImageNet and person Re-ID data. To seek an alternative to traditional pretraining, here we investigate semantic-based pretraining as another method to utilize additional textual data against ImageNet pretraining. Specifically, we manually construct a diversified FineGPR-C caption dataset for the first time on person Re-ID events. Based on it, a pure semantic-based pretraining approach named VTBR is proposed to adopt dense captions to learn visual representations with fewer images. We train convolutional neural networks from scratch on the captions of FineGPR-C dataset, and then transfer them to downstream Re-ID tasks. Comprehensive experiments conducted on benchmark datasets show that our VTBR can achieve competitive performance compared with ImageNet pretraining - despite using up to 1.4x fewer images, revealing its potential in Re-ID pretraining.
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We present ViLBERT (short for Vision-and-Language BERT), a model for learning task-agnostic joint representations of image content and natural language. We extend the popular BERT architecture to a multi-modal two-stream model, processing both visual and textual inputs in separate streams that interact through co-attentional transformer layers. We pretrain our model through two proxy tasks on the large, automatically collected Conceptual Captions dataset and then transfer it to multiple established vision-and-language tasks -visual question answering, visual commonsense reasoning, referring expressions, and caption-based image retrieval -by making only minor additions to the base architecture. We observe significant improvements across tasks compared to existing task-specific modelsachieving state-of-the-art on all four tasks. Our work represents a shift away from learning groundings between vision and language only as part of task training and towards treating visual grounding as a pretrainable and transferable capability.Preprint. Under review.
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近年来,根据Vision-Language预训练(VLP),我们在图像标题任务中掌握了显着的性能提升。比例被认为是这一进步的重要因素。然而,大多数现有工作仅侧重于预训练的变压器,在大约400万图像上具有中等大小(例如,12或24层)。在本文中,我们呈现柠檬,一个大规模的图像标题器,并为图像标题的VLP的缩放行为提供第一个实证研究。我们使用最先进的VINVL模型作为我们的参考模型,它由图像特征提取器和变压器模型组成,并将变压器上下放大,模型大小范围从13到675万参数。在数据方面,我们通过高达200万图像文本对进行实验,该对基于图像的Alt属性自动从Web自动收集(称为ALT200M)。广泛的分析有助于将性能趋势表征为模型大小和预训练数据尺寸增加。我们还比较不同的培训配方,特别是在大规模嘈杂数据上培训。结果,柠檬在几个主要图像标题基准上实现了新的技术状态,包括Coco标题,Nocaps和概念标题。我们还显示柠檬可以在以零拍摄方式使用时生成带有长尾视觉概念的标题。
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最先进的愿景和愿景和语言模型依靠大规模的Visio-linguisting预借鉴,以获得各种下游任务的良好性能。通常,这种模型通常是跨模态(对比)或多模态(具有早期融合)但不是两者;它们通常只针对特定的方式或任务。有希望的方向将是使用单一整体普遍模型,作为“基础”,目标是一次性的所有方式 - 真正的视觉和语言基础模型应该擅长视力任务,语言任务和交叉和多数模态视觉和语言任务。我们将Flava介绍在这样的模型中,并在跨越这些目标模式的广泛的35个任务上展示令人印象深刻的性能。
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探索大规模预处理的基础模型对计算机视觉具有重大兴趣,因为这些模型可以快速转移到许多下游任务中。本文介绍了对比字幕(COCA),这是一种极简主义的设计,旨在为图像文本编码器编码器基础模型预算与对比度损失和字幕损失,从而从剪辑和诸如simvlm之类的生成方法之类的对比方法中包含模型能力。与所有解码器层都参与编码器输出的标准编码器 - 模块变压器相反,可口可乐省略了解码器层的上半部分的交叉注意,以编码单峰文本表示,并串联到剩余的解码器层,这些解码器与图像编码器相交的解码器层多模式图像文本表示。除了对多模态解码器输出的字幕损失外,我们还应用了单峰图像和文本嵌入之间的对比损失,该输出可以预测文本令牌自动加压。通过共享相同的计算图,可以用最小的开销有效地计算两个培训目标。可口可乐是端到端和从头开始的网络尺度alt-text数据和带注释的图像,通过将所有标签视为文本,无缝地统一自然语言监督以进行表示。从经验上讲,可口可乐通过零拍传输或在广泛的下游任务上进行零摄像转移或最少的特定任务适应,跨越视觉识别(Imagenet,Kinetics-400/600/700,瞬间, ),交叉模式检索(MSCOCO,FLICKR30K,MSR-VTT),多模式理解(VQA,SNLI-VE,NLVR2)和图像字幕(MSCOCO,NOCAPS)。值得注意的是,在Imagenet分类方面,COCA获得了86.3%的TOP-1准确性,带有冷冻编码器和学习的分类头90.6%,以及带有填充编码器的Imagenet上的新最先进的91.0%Top-1 Top-1精度。
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This paper presents a detailed study of improving visual representations for vision language (VL) tasks and develops an improved object detection model to provide object-centric representations of images. Compared to the most widely used bottom-up and top-down model [2], the new model is bigger, better-designed for VL tasks, and pre-trained on much larger training corpora that combine multiple public annotated object detection datasets. Therefore, it can generate representations of a richer collection of visual objects and concepts. While previous VL research focuses mainly on improving the vision-language fusion model and leaves the object detection model improvement untouched, we show that visual features matter significantly in VL models. In our experiments we feed the visual features generated by the new object detection model into a Transformer-based VL fusion model OSCAR [21], and utilize an improved approach OSCAR+ to pre-train the VL model and fine-tune it on a wide range of downstream VL tasks. Our results show that the new visual features significantly improve the performance across all VL tasks, creating new state-of-the-art results on seven public benchmarks. Code, models and pre-extracted features are released at https://github.com/pzzhang/VinVL. ♥ Microsoft Corporation♠ University of Washington † indicates equal contributions.
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标记数据通常昂贵且耗时,特别是对于诸如对象检测和实例分割之类的任务,这需要对图像的密集标签进行密集的标签。虽然几张拍摄对象检测是关于培训小说中的模型(看不见的)对象类具有很少的数据,但它仍然需要在许多标记的基础(见)类的课程上进行训练。另一方面,自我监督的方法旨在从未标记数据学习的学习表示,该数据转移到诸如物体检测的下游任务。结合几次射击和自我监督的物体检测是一个有前途的研究方向。在本调查中,我们审查并表征了几次射击和自我监督对象检测的最新方法。然后,我们给我们的主要外卖,并讨论未来的研究方向。https://gabrielhuang.github.io/fsod-survey/的项目页面
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语言,视觉和多模式预审查的大量融合正在出现。在这项工作中,我们介绍了通用多模式基础模型BEIT-3,该模型BEIT-3,该模型在视觉和视觉任务上都实现了最新的转移性能。具体来说,我们从三个方面提出了大融合:骨干架构,预训练任务和模型扩展。我们介绍了多道路变压器进行通用建模,其中模块化体系结构可以实现深融合和模态特定的编码。基于共享的骨干,我们以统一的方式对图像(Imglish),文本(英语)和图像文本对(“平行句子”)进行蒙面的“语言”建模。实验结果表明,BEIT-3在对象检测(COCO),语义分割(ADE20K),图像分类(Imagenet),视觉推理(NLVR2),视觉询问答案(VQAV2),图像字幕上获得最先进的性能(可可)和跨模式检索(Flickr30k,可可)。
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我们提出了GLIPV2,这是一个接地的VL理解模型,该模型既服务于本地化任务(例如,对象检测,实例分割)和视觉语言(VL)理解任务(例如VQA,图像字幕)。 GLIPV2优雅地将本地化预训练和视觉语言预训练(VLP)具有三个预训练任务:短语接地作为对检测任务的VL重新重新制定,区域词对比度学习作为新型的区域词对比度对比度对比学习任务,以及蒙面的语言建模。这种统一不仅简化了先前的多阶段VLP程序,而且还可以在本地化和理解任务之间实现相互利益。实验结果表明,在各种本地化和理解任务上,单个GLIPV2模型(所有模型权重)在SOTA性能附近实现。该模型还显示了(1)在开放式摄制对象检测任务上进行的强零射击和很少的自适应性能,以及(2)VL理解任务上的卓越接地能力。代码将在https://github.com/microsoft/glip上发布。
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远见和语言预测已成为解决多模式下游任务的普遍方法。当前的趋势是朝着更大的模型和预处理数据集迈进。从长远来看,这一计算头急促似乎是不合理的,而是朝着可持续的解决方案迈进,事实上,排除了资源有限的学术实验室。在这项工作中,我们提出了一个称为VICHA的新框架,该框架有效利用输入数据以通过以下方式提高学习,以: ,(c)利用图像级注释,称为视觉概念,使用现有基础模型(例如剪辑)获得,以提高图像编码器的性能。尽管对数据的预估计少了四倍,但我们的VICHA策略在下游任务(例如图像文本检索,VQA,视觉推理,视觉上和视觉接地)上的其他方法优于其他方法。该代码将在此处公开提供:https://github.com/mshukor/vicha
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Astounding results from Transformer models on natural language tasks have intrigued the vision community to study their application to computer vision problems. Among their salient benefits, Transformers enable modeling long dependencies between input sequence elements and support parallel processing of sequence as compared to recurrent networks e.g., Long short-term memory (LSTM). Different from convolutional networks, Transformers require minimal inductive biases for their design and are naturally suited as set-functions. Furthermore, the straightforward design of Transformers allows processing multiple modalities (e.g., images, videos, text and speech) using similar processing blocks and demonstrates excellent scalability to very large capacity networks and huge datasets. These strengths have led to exciting progress on a number of vision tasks using Transformer networks. This survey aims to provide a comprehensive overview of the Transformer models in the computer vision discipline. We start with an introduction to fundamental concepts behind the success of Transformers i.e., self-attention, large-scale pre-training, and bidirectional feature encoding. We then cover extensive applications of transformers in vision including popular recognition tasks (e.g., image classification, object detection, action recognition, and segmentation), generative modeling, multi-modal tasks (e.g., visual-question answering, visual reasoning, and visual grounding), video processing (e.g., activity recognition, video forecasting), low-level vision (e.g., image super-resolution, image enhancement, and colorization) and 3D analysis (e.g., point cloud classification and segmentation). We compare the respective advantages and limitations of popular techniques both in terms of architectural design and their experimental value. Finally, we provide an analysis on open research directions and possible future works. We hope this effort will ignite further interest in the community to solve current challenges towards the application of transformer models in computer vision.
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使用深度学习对胸部射线照相的自动分析具有巨大的潜力,可以增强患者疾病的临床诊断。但是,深度学习模型通常需要大量的带注释的数据来实现高性能 - 通常是医疗领域适应的障碍。在本文中,我们构建了一个利用放射学报告来通过有限的标记数据(少于1000个示例)来改善医学图像分类性能,以提高医学图像分类性能。具体而言,我们检查了捕获图像预告片,以学习以更少的例子进行训练的高质量医学图像表示。在对卷积编码器和变压器解码器进行联合预测之后,我们将学习的编码器转移到各种分类任务中。平均9多种病理学,我们发现我们的模型在标记培训数据受到限制时,比参见和内域监督的预处理的分类性能更高。
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Joint image-text embedding is the bedrock for most Visionand-Language (V+L) tasks, where multimodality inputs are simultaneously processed for joint visual and textual understanding. In this paper, we introduce UNITER, a UNiversal Image-TExt Representation, learned through large-scale pre-training over four image-text datasets (COCO, Visual Genome, Conceptual Captions, and SBU Captions), which can power heterogeneous downstream V+L tasks with joint multimodal embeddings. We design four pre-training tasks: Masked Language Modeling (MLM), Masked Region Modeling (MRM, with three variants), Image-Text Matching (ITM), and Word-Region Alignment (WRA). Different from previous work that applies joint random masking to both modalities, we use conditional masking on pre-training tasks (i.e., masked language/region modeling is conditioned on full observation of image/text). In addition to ITM for global image-text alignment, we also propose WRA via the use of Optimal Transport (OT) to explicitly encourage finegrained alignment between words and image regions during pre-training. Comprehensive analysis shows that both conditional masking and OTbased WRA contribute to better pre-training. We also conduct a thorough ablation study to find an optimal combination of pre-training tasks. Extensive experiments show that UNITER achieves new state of the art across six V+L tasks (over nine datasets), including Visual Question
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Vision-and-Language Pre-training (VLP) has improved performance on various joint vision-andlanguage downstream tasks. Current approaches to VLP heavily rely on image feature extraction processes, most of which involve region supervision (e.g., object detection) and the convolutional architecture (e.g., ResNet). Although disregarded in the literature, we find it problematic in terms of both (1) efficiency/speed, that simply extracting input features requires much more computation than the multimodal interaction steps; and (2) expressive power, as it is upper bounded to the expressive power of the visual embedder and its predefined visual vocabulary. In this paper, we present a minimal VLP model, Vision-and-Language Transformer (ViLT), monolithic in the sense that the processing of visual inputs is drastically simplified to just the same convolution-free manner that we process textual inputs. We show that ViLT is up to tens of times faster than previous VLP models, yet with competitive or better downstream task performance. Our code and pre-trained weights are available at https://github.com/dandelin/vilt.
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在这项工作中,我们提出了一种开放式摄制对象检测方法,该方法基于图像映射对,学会了检测新颖对象类别以及给定的一组已知类别。这是一种两阶段的训练方法,首先使用位置引导的图像捕获匹配技术以弱监督的方式学习新颖和已知类别的类标签,第二个使用已知的类注释专用于对象检测任务的模型。我们表明,一个简单的语言模型比检测新对象的大型上下文化语言模型更适合。此外,我们引入了一种一致性调查技术,以更好地利用图像捕获对信息。我们的方法比较与现有的开放式检测方法相比,同时具有数据效率。源代码可从https://github.com/lmb-freiburg/locov获得。
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