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Computer Vision – ECCV 2022

17th European Conference, Tel Aviv, Israel, October 23–27, 2022, Proceedings, Part XX

Specificaties
Paperback, blz. | Engels
Springer Nature Switzerland | e druk, 2022
ISBN13: 9783031200434
Rubricering
Springer Nature Switzerland e druk, 2022 9783031200434
Onderdeel van serie Lecture Notes in Computer Science
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Samenvatting

The 39-volume set, comprising the LNCS books 13661 until 13699, constitutes the refereed proceedings of the 17th European Conference on Computer Vision, ECCV 2022, held in Tel Aviv, Israel, during October 23–27, 2022.

 

The 1645 papers presented in these proceedings were carefully reviewed and selected from a total of 5804 submissions. The papers deal with topics such as computer vision; machine learning; deep neural networks; reinforcement learning; object recognition; image classification; image processing; object detection; semantic segmentation; human pose estimation; 3d reconstruction; stereo vision; computational photography; neural networks; image coding; image reconstruction; object recognition; motion estimation.

Specificaties

ISBN13:9783031200434
Taal:Engels
Bindwijze:paperback
Uitgever:Springer Nature Switzerland

Inhoudsopgave

tSF: Transformer-Based Semantic Filter for Few-Shot Learning.- Adversarial Feature Augmentation for Cross-Domain Few-Shot&nbsp;Classification.-&nbsp;Constructing Balance from Imbalance for Long-Tailed Image Recognition.-&nbsp;On Multi-Domain Long-Tailed Recognition, Imbalanced Domain&nbsp;Generalization and Beyond.-&nbsp;Few-Shot Video Object Detection.-&nbsp;Worst Case Matters for Few-Shot Recognition.-&nbsp;Exploring Hierarchical Graph Representation for Large-Scale Zero-Shot&nbsp;Image Classification.-&nbsp;Doubly Deformable Aggregation of Covariance Matrices for Few-Shot&nbsp;Segmentation.-&nbsp;Dense Cross-Query-and-Support Attention Weighted Mask Aggregation&nbsp;for Few-Shot Segmentation.-&nbsp;Rethinking Clustering-Based Pseudo Labeling for Unsupervised&nbsp;Meta-Learning.-&nbsp;CLASTER: Clustering with Reinforcement Learning for Zero-Shot&nbsp;Action Recognition.-&nbsp;Few-Shot Class-Incremental Learning for 3D Point Cloud Objects.-&nbsp;Meta-Learning with Less Forgetting on Large-Scale Non-stationary&nbsp;Task Distributions.-&nbsp;DNA: Improving Few-Shot Transfer Learning with Low-Rank&nbsp;Decomposition and Alignment.-&nbsp;Learning Instance and Task-Aware Dynamic Kernels for Few Shot&nbsp;Learning.-&nbsp;Open-World Semantic Segmentation via Contrasting and Clustering&nbsp;Vision-Language Embedding.-&nbsp;Few-Shot Classification with Contrastive Learning.-&nbsp;Time-rEversed diffusioN tEnsor Transformer: A New TENET of&nbsp;Few-Shot Object Detection.-&nbsp;Self-Promoted Supervision for Few-Shot Transformer.-&nbsp;Few-Shot Object Counting and Detection.-&nbsp;Rethinking Few-Shot Object Detection on a Multi-Domain Benchmark.-&nbsp;Cross-Domain Cross-Set Few-Shot Learning via Learning Compact and&nbsp;Aligned Representations.-&nbsp;Mutually Reinforcing Structure with Proposal Contrastive Consistency&nbsp;for Few-Shot Object Detection.-&nbsp;Dual Contrastive Learning with Anatomical Auxiliary Supervision for&nbsp;Few-Shot Medical Image Segmentation.-&nbsp;Improving Few-Shot Learning through Multi-task Representation&nbsp;Learning Theory.-&nbsp;Tree Structure-Aware Few Shot Image Classification via Hierarchical&nbsp;Aggregation.-&nbsp;Inductive and Transductive Few Shot Video Classification via&nbsp;Appearance and Temporal Alignments.-&nbsp;Temporal and Cross-Modal Attention for Audio-Visual Zero-Shot Learning.-&nbsp;HM: Hybrid Masking for Few-Shot Segmentation.-&nbsp;TransVLAD: Focusing on Locally Aggregated Descriptors for Few-Shot<div>Learning.-&nbsp;Kernel Relative-Prototype Spectral Filtering for Few-Shot Learning.-&nbsp;“This Is My Unicorn, Fluffy”: Personalizing Frozen Vision-Language&nbsp;Representations.-&nbsp;CLOSE: Curriculum Learning on the Sharing Extent towards Better&nbsp;One-Shot NAS.-&nbsp;Streamable Neural Fields.-&nbsp;Gradient-Based Uncertainty for Monocular Depth Estimation.-&nbsp;Online Continual Learning with Contrastive Vision Transformer.-&nbsp;CPrune: Compiler-Informed Model Pruning for Efficient Target-Aware&nbsp;DNN Execution.-&nbsp;EAutoDet: Efficient Architecture Search for Object Detection.-&nbsp;A Max-Flow Based Approach for Neural Architecture Search.-&nbsp;OccamNets: Mitigating Dataset Bias by Favoring Simpler Hypotheses.-&nbsp;ERA: Enhanced Rational Activations.-&nbsp;Convolutional Embedding Makes Hierarchical Vision Transformer Stronger.</div>
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        Computer Vision – ECCV 2022