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E-raamat: Computer Vision - ACCV 2020: 15th Asian Conference on Computer Vision, Kyoto, Japan, November 30 - December 4, 2020, Revised Selected Papers, Part III

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The six volume set of LNCS 12622-12627 constitutes the proceedings of the 15th Asian Conference on Computer Vision, ACCV 2020, held in Kyoto, Japan, in November/ December 2020.*The total of 254 contributions was carefully reviewed and selected from 768 submissions during two rounds of reviewing and improvement. The papers focus on the following topics:





Part I: 3D computer vision; segmentation and grouping





Part II: low-level vision, image processing; motion and tracking





Part III: recognition and detection; optimization, statistical methods, and learning; robot vision





Part IV: deep learning for computer vision, generative models for computer vision





Part V: face, pose, action, and gesture; video analysis and event recognition; biomedical image analysis





Part VI: applications of computer vision; vision for X; datasets and performance analysis





*The conference was held virtually.
Recognition and Detection.- End-to-end Model-based Gait Recognition.- Horizontal Flipping Assisted Disentangled Feature Learning for Semi-Supervised Person Re-Identification.- MIX'EM: Unsupervised Image Classification using a Mixture of Embeddings.- Backbone Based Feature Enhancement for Object Detection.- Long-Term Cloth-Changing Person Re-identification.- Any-Shot Object Detection.- Background Learnable Cascade for Zero-Shot Object Detection.- Unsupervised Domain Adaptive Object Detection using Forward-Backward Cyclic Adaptation.- COG: COnsistent data auGmentation for object perception.- Synthesizing the Unseen for Zero-shot Object Detection.- Fully Supervised and Guided Distillation for One-Stage Detectors.- Visualizing Color-wise Saliency of Black-Box Image Classification Models.- ERIC: Extracting Relations Inferred from Convolutions.- D2D: Keypoint Extraction with Describe to Detect Approach.- Accurate Arbitrary-Shaped Scene Text Detection via Iterative Polynomial ParameterRegression.- Adaptive Spotting: Deep Reinforcement Object Search in 3D Point Clouds.- Efficient Large-Scale Semantic Visual Localization in 2D Maps.- Synthetic-to-Real Unsupervised Domain Adaptation for Scene Text Detection in the Wild.- Scale-Aware Polar Representation for Arbitrarily-Shaped Text Detection.- Branch Interaction Network for Person Re-identification.- BLT: Balancing Long-Tailed Datasets with Adversarially-Perturbed Images.- Jointly Discriminating and Frequent Visual Representation Mining.- Discrete Spatial Importance-Based Deep Weighted Hashing.- Low-level Sensor Fusion Network for 3D Vehicle Detection using Radar Range-Azimuth Heatmap and Monocular Image.- MLIFeat: Multi-level information fusion based deep local features.- CLASS: Cross-Level Attention and Supervision for Salient Objects Detection.- Cascaded Transposed Long-range Convolutions for Monocular Depth Estimation.- Optimization, Statistical Methods, and Learning.- Bridging Adversarial and Statistical Domain Transfer via Spectral Adaptation Networks.- Large-Scale Cross-Domain Few-Shot Learning.- Channel Pruning for Accelerating Convolutional Neural Networks via Wasserstein Metric.- Progressive Batching for Efficient Non-linear Least Squares.- Fast and Differentiable Message Passing on Pairwise Markov Random Fields.- A Calibration Method for the Generalized Imaging Model with Uncertain Calibration Target Coordinates.- Graph-based Heuristic Search for Module Selection Procedure in Neural Module Network.- Towards Fast and Robust Adversarial Training for Image Classification.- Few-Shot Zero-Shot Learning: Knowledge Transfer with Less Supervision.- Lossless Image Compression Using a Multi-Scale Progressive Statistical Model.- Spatial Class Distribution Shift in Unsupervised Domain Adaptation: Local Alignment Comes to Rescue.- Robot Vision.- Point Proposal based Instance Segmentation with Rectangular Masks for Robot Picking Task.- Multi-task Learning with Future States for Vision-based Autonomous Driving.- MTNAS: Search Multi-Task Networks for Autonomous Driving.- Compact and Fast Underwater Segmentation Network for Autonomous Underwater Vehicles.- L2R GAN: LiDAR-to-Radar Translation.- V2A - Vision to Action: Learning robotic arm actions based on vision and language.- To Filter Prune, or to Layer Prune, That Is The Question.