我们提出了Unified-io,该模型执行了跨越经典计算机视觉任务的各种AI任务,包括姿势估计,对象检测,深度估计和图像生成,视觉和语言任务,例如区域字幕和引用表达理解,并引用表达理解,进行自然语言处理任务,例如回答和释义。由于与每个任务有关的异质输入和输出,包括RGB图像,每个像素映射,二进制掩码,边界框和语言,开发一个统一模型引起了独特的挑战。我们通过将每个受支持的输入和输出均匀地均匀地统一到一系列离散的词汇令牌来实现这一统一。在所有任务中,这种共同的表示使我们能够在视觉和语言字段中的80多个不同数据集上培训单个基于变压器的体系结构。 Unified-io是第一个能够在砂砾基准上执行所有7个任务的模型,并在NYUV2-DEPTH,Imagenet,VQA2.0,OK-VQA,SWIG,SWIG,VIZWIZ,BOOLQ,BOOLQ和SCITAIL,带有NYUV2-DEPTH,Imagenet,VQA2.0,诸如NYUV2-DEPTH,ImageNet,vqa2.0等16个不同的基准中产生强大的结果。没有任务或基准特定的微调。 unified-io的演示可在https://unified-io.allenai.org上获得。
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通用视觉(GPV)系统是旨在解决各种视觉任务的模型,而无需进行架构更改。如今,GPV主要从大型完全监督的数据集中学习技能和概念。通过获取数据以迅速学习每个技能的每个概念,将GPV扩展到数万个概念都变得令人望而却步。这项工作提出了一种有效且廉价的替代方法:从监督数据集中学习技能,从Web图像搜索中学习概念,并利用GPV的关键特征:跨技能传递视觉知识的能力。我们使用跨越10K+视觉概念的1M+图像的数据集来演示3个基准上的两个现有GPV(GPV-1和VL-T5)的Webly Supumented概念扩展:5个基于可可的数据集(80个主要概念),这是一个新的策划系列,这是一个新的策划系列。基于OpenImages和VisualGenome存储库(〜500个概念)以及Web衍生的数据集(10K+概念)的5个数据集。我们还提出了一种新的体系结构GPV-2,该架构支持各种任务 - 从分类和本地化等视觉任务到Qu Viewer+语言任务,例如QA和字幕,再到更多的利基市场,例如人类对象互动检测。 GPV-2从Web数据中受益匪浅,并且在这些基准测试中胜过GPV-1和VL-T5。我们的数据,代码和Web演示可在https://prior.allenai.org/projects/gpv2上获得。
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尽管语言任务自然而然地以单个,统一的建模框架(即生成代币序列)表示,但在计算机视觉中并非如此。结果,对于不同的视力任务,不同的架构和损失功能的扩散。在这项工作中,我们表明,如果根据共享像素到序列界面进行配制,也可以统一一组“核心”计算机视觉任务。我们专注于四个任务,即对象检测,实例分割,关键点检测和图像字幕,所有这些任务都具有各种类型的输出,例如边界框或密集的掩码。尽管如此,通过将每个任务的输出作为具有统一界面的离散令牌的顺序,我们表明可以在所有这些任务上训练具有单个模型体系结构和损失功能的神经网络,而没有特定于任务的自定义。为了解决特定的任务,我们使用一个简短的提示作为任务说明,序列输出适应提示,以便它可以产生特定于任务的输出。我们表明,与成熟的特定任务模型相比,这种模型可以实现竞争性能。
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在本文中,我们提出了Unicorn,一种vision-language(vl)模型,使文本生成和边界框预测到单个架构中。具体而言,我们将每个框量化为四个离散框令牌,并将其序列化为序列,可以与文本令牌集成。我们将所有VL问题作为一代任务,其中目标序列由集成文本和框令牌组成。然后,我们训练变压器编码器解码器以以自动回归方式预测目标。通过如此统一的框架和输入输出格式,Unicorn在7 VL基准测试中实现了对现有技术的可比性的性能,涵盖了视觉接地,接地字幕,视觉问题应答和图像标题任务。当用多任务FINETUNING培训时,UNICORN可以通过单一的参数方法接近不同的VL任务,从而跨越下游任务边界。我们展示了具有单一模型不仅可以节省参数,而且还可以在某些任务上提高模型性能。最后,Unicorn显示了概括到诸如ImageNet对象本地化的新任务的能力。
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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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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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We present Answer-Me, a task-aware multi-task framework which unifies a variety of question answering tasks, such as, visual question answering, visual entailment, visual reasoning. In contrast to previous works using contrastive or generative captioning training, we propose a novel and simple recipe to pre-train a vision-language joint model, which is multi-task as well. The pre-training uses only noisy image captioning data, and is formulated to use the entire architecture end-to-end with both a strong language encoder and decoder. Our results show state-of-the-art performance, zero-shot generalization, robustness to forgetting, and competitive single-task results across a variety of question answering tasks. Our multi-task mixture training learns from tasks of various question intents and thus generalizes better, including on zero-shot vision-language tasks. We conduct experiments in the challenging multi-task and open-vocabulary settings and across a variety of datasets and tasks, such as VQA2.0, SNLI-VE, NLVR2, GQA. We observe that the proposed approach is able to generalize to unseen tasks and that more diverse mixtures lead to higher accuracy in both known and novel tasks.
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视觉问题应答(VQA)任务利用视觉图像和语言分析来回回答图像的文本问题。它是一个流行的研究课题,在过去十年中越来越多的现实应用。本文介绍了我们最近对AliceMind-MMU的研究(阿里巴巴的编码器 - 解码器来自Damo Academy - 多媒体理解的机器智能实验室),其比人类在VQA上获得相似甚至略微更好的结果。这是通过系统地改善VQA流水线来实现的,包括:(1)具有全面的视觉和文本特征表示的预培训; (2)与学习参加的有效跨模型互动; (3)一个新颖的知识挖掘框架,具有专门的专业专家模块,适用于复杂的VQA任务。处理不同类型的视觉问题,需要具有相应的专业知识在提高我们的VQA架构的表现方面发挥着重要作用,这取决于人力水平。进行了广泛的实验和分析,以证明新的研究工作的有效性。
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变压器架构已经带来了计算语言领域的根本变化,这已经由经常性神经网络主导多年。它的成功还意味着具有语言和愿景的跨模型任务的大幅度变化,许多研究人员已经解决了这个问题。在本文中,我们审查了该领域中的一些最关键的里程碑,以及变压器架构如何纳入Visuol语言跨模型任务的整体趋势。此外,我们讨论了当前的局限性,并推测了我们发现迫在眉睫的一些前景。
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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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We present X-Decoder, a generalized decoding model that can predict pixel-level segmentation and language tokens seamlessly. X-Decodert takes as input two types of queries: (i) generic non-semantic queries and (ii) semantic queries induced from text inputs, to decode different pixel-level and token-level outputs in the same semantic space. With such a novel design, X-Decoder is the first work that provides a unified way to support all types of image segmentation and a variety of vision-language (VL) tasks. Further, our design enables seamless interactions across tasks at different granularities and brings mutual benefits by learning a common and rich pixel-level visual-semantic understanding space, without any pseudo-labeling. After pretraining on a mixed set of a limited amount of segmentation data and millions of image-text pairs, X-Decoder exhibits strong transferability to a wide range of downstream tasks in both zero-shot and finetuning settings. Notably, it achieves (1) state-of-the-art results on open-vocabulary segmentation and referring segmentation on eight datasets; (2) better or competitive finetuned performance to other generalist and specialist models on segmentation and VL tasks; and (3) flexibility for efficient finetuning and novel task composition (e.g., referring captioning and image editing). Code, demo, video, and visualization are available at https://x-decoder-vl.github.io.
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有效的缩放和灵活的任务接口使大型语言模型能够在许多任务中表现出色。帕利(Pali)根据视觉和文本输入生成文本,并使用该界面以许多语言执行许多视觉,语言和多模式任务。为了训练帕利,我们利用了大型的编码器语言模型和视觉变压器(VITS)。这使我们能够利用其现有能力,并利用培训它们的大量成本。我们发现,视觉和语言组成部分的联合缩放很重要。由于现有的语言变压器比其视觉对应物要大得多,因此我们训练迄今为止最大的VIT(VIT-E),以量化甚至大容量视觉模型的好处。为了训练Pali,我们基于一个新的图像文本训练集,其中包含10B图像和文本,以100多种语言来创建大型的多语言组合。帕利(Pali)在多个视觉和语言任务(例如字幕,视觉问题,索方式,场景文本理解)中实现了最新的,同时保留了简单,模块化和可扩展的设计。
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我们提出了Findit,这是一个简单而多功能的框架,统一了各种视觉接地和本地化任务,包括引用表达理解,基于文本的本地化和对象检测。我们体系结构的关键是一个有效的多尺度融合模块,该模块统一了整个任务中不同的本地化要求。此外,我们发现标准对象检测器在统一这些任务的无需特定任务设计,损失或预计算检测方面非常有效。我们的端到端可训练框架灵活,准确地响应了零,一个或多个对象的广泛的参考表达,本地化或检测查询。在这些任务上进行了共同培训,发现在引用表达和基于文本的本地化方面,胜过最高的艺术状态,并在对象检测中表现出竞争性的性能。最后,与强大的单任务基准相比,Findit可以更好地推广到分布数据和新型类别。所有这些都是通过一个单一的,统一和有效的模型来完成的。代码将发布。
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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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Instruction tuning, a new learning paradigm that fine-tunes pre-trained language models on tasks specified through instructions, has shown promising zero-shot performance on various natural language processing tasks. However, it's still not explored for vision and multimodal tasks. In this work, we introduce MultiInstruct, the first multimodal instruction tuning benchmark dataset that consists of 47 diverse multimodal tasks covering 11 broad categories. Each task is designed at least with 5,000 instances (input-out pairs) from existing open-source datasets and 5 expert-written instructions. We take OFA as the base pre-trained model for multimodal instruction tuning, and to improve its performance, we explore multiple transfer learning strategies to leverage the large-scale Natural Instructions dataset. Experimental results demonstrate its strong zero-shot performance on various unseen multimodal tasks and the benefit of transfer learning from text-only instructions. We also design a new evaluation metric: Sensitivity, to evaluate how sensitive the model is to the variety of instructions. Our results indicate that the model is less sensitive to the varying instructions after finetuning on a diverse set of tasks and instructions for each task.
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Current computer vision models, unlike the human visual system, cannot yet achieve general-purpose visual understanding. Existing efforts to create a general vision model are limited in the scope of assessed tasks and offer no overarching framework to perform them holistically. We present a new comprehensive benchmark, General-purpose Visual Understanding Evaluation (G-VUE), covering the full spectrum of visual cognitive abilities with four functional domains $\unicode{x2014}$ Perceive, Ground, Reason, and Act. The four domains are embodied in 11 carefully curated tasks, from 3D reconstruction to visual reasoning and manipulation. Along with the benchmark, we provide a general encoder-decoder framework to allow for the evaluation of arbitrary visual representation on all 11 tasks. We evaluate various pre-trained visual representations with our framework and observe that (1) Transformer-based visual backbone generally outperforms CNN-based backbone on G-VUE, (2) visual representations from vision-language pre-training are superior to those with vision-only pre-training across visual tasks. With G-VUE, we provide a holistic evaluation standard to motivate research toward building general-purpose visual systems via obtaining more general-purpose visual representations.
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This paper presents a unified Vision-Language Pre-training (VLP) model. The model is unified in that (1) it can be finetuned for either vision-language generation (e.g., image captioning) or understanding (e.g., visual question answering) tasks, and (2) it uses a shared multi-layer transformer network for both encoding and decoding, which differs from many existing methods where the encoder and decoder are implemented using separate models. The unified VLP model is pre-trained on a large amount of image-text pairs using the unsupervised learning objectives of two tasks: bidirectional and sequence-to-sequence (seq2seq) masked vision-language prediction. The two tasks differ solely in what context the prediction conditions on. This is controlled by utilizing specific self-attention masks for the shared transformer network. To the best of our knowledge, VLP is the first reported model that achieves state-of-the-art results on both vision-language generation and understanding tasks, as disparate as image captioning and visual question answering, across three challenging benchmark datasets: COCO Captions, Flickr30k Captions, and VQA 2.0. The code and the pre-trained models are available at https://github.com/LuoweiZhou/VLP.
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In-context learning, as a new paradigm in NLP, allows the model to rapidly adapt to various tasks with only a handful of prompts and examples. But in computer vision, the difficulties for in-context learning lie in that tasks vary significantly in the output representations, thus it is unclear how to define the general-purpose task prompts that the vision model can understand and transfer to out-of-domain tasks. In this work, we present Painter, a generalist model which addresses these obstacles with an "image"-centric solution, that is, to redefine the output of core vision tasks as images, and specify task prompts as also images. With this idea, our training process is extremely simple, which performs standard masked image modeling on the stitch of input and output image pairs. This makes the model capable of performing tasks conditioned on visible image patches. Thus, during inference, we can adopt a pair of input and output images from the same task as the input condition, to indicate which task to perform. Without bells and whistles, our generalist Painter can achieve competitive performance compared to well-established task-specific models, on seven representative vision tasks ranging from high-level visual understanding to low-level image processing. Painter significantly outperforms recent generalist models on several challenging tasks. Surprisingly, our model shows capabilities of completing out-of-domain tasks, which do not exist in the training data, such as open-category keypoint detection and object segmentation, validating the powerful task transferability of in-context learning.
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自动视觉解对我们多样化和开放的世界需要计算机视觉模型,以概括为特定任务的最小定制,类似于人类视力。计算机视觉基础型号培训,培训多样化,大型数据集,可以适应各种下游任务,对该任务来解决现实世界计算机视觉应用而言至关重要。虽然现有的视觉基础模型如剪辑,对齐和吴道2.0主要集中在映射图像和文本表示到跨模型共享表示,我们介绍了一台新的计算机视觉基础模型,佛罗伦萨,扩大粗糙的表示(现场)到精细(对象),从静态(图像)到动态(视频),以及从RGB到多个模态(标题,深度)。通过从Web级图像文本数据中纳入通用视觉语言表示,我们的佛罗伦萨模型可以很容易地适应各种计算机视觉任务,例如分类,检索,对象检测,VQA,图像标题,视频检索和动作识别。此外,佛罗伦萨在许多类型的转移学习中表现出出色的表现:全面采样的微调,线性探测,几次射击传输和用于新颖图像和物体的零拍摄传输。所有这些属性对于我们的视觉基础模型至关重要,以提供通用视觉任务。佛罗伦萨实现了新的最先进的导致44个代表性基准,例如Imagenet-1K零射击分类,最高1精度为83.74,最高5个精度为97.18,62.4地图上的Coco微调, 80.36在VQA上,动力学-600上的87.8。
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在过去的几年中,训练前模型的出现将单峰领域(例如计算机视觉(CV)和自然语言处理(NLP))带到了一个新时代。实质性的作品表明它们对下游大学任务有益,并避免从头开始训练新的模型。那么,此类预训练的模型可以应用于多模式任务吗?研究人员探索了这个问题并取得了重大进展。本文调查了视觉预训练(VLP)的最新进展和新的前沿,包括图像文本和视频文本预训练。为了使读者更好地掌握VLP,我们首先从五个方面回顾了其最新进展:功能提取,模型体系结构,培训预训练目标,预训练数据集和下游任务。然后,我们详细概述了特定的VLP模型。最后,我们讨论了VLP中的新边界。据我们所知,这是对VLP的首次调查。我们希望这项调查能够阐明VLP领域的未来研究。
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