Improve Object Detection with Feature-based Knowledge Distillation: Towards Accurate and Efficient DetectorsLinfeng ZhangKaisheng MaInternational Conference on Learning Representations
Object-Detection-Knowledge-Distillation-ICLR2021 The official implementation of ICLR2021 paper "Improve Object Detection with Feature-based Knowledge Distillation: Towards Accurate and Efficient Detectors". Please refer to thesupplementary material in Openreviewfor the codes now. ...
IMPROVE OBJECT DETECTION WITH FEATURE-BASED KNOWLEDGE DISTILLATION: TOWARDS ACCURATE AND EFFICIENT DETECTORS学习笔记 ICLR2021 Introduction 大多数为图像分类设计的知识蒸馏网络在目标检测任务中效果不好,原因是: 前景和背景像素之间不平衡 缺乏对不同像素之间关系的提炼 基于...猜...
model trained with the cleaner categories learns a better-clustered embedding space than the model trained with the noisy categories. The new embedding space improves the object detection task and also presents better bounding boxes features representations which help to solve the visual grounding task....
For a retail client, PyImageSearch’s “Real-Time Object Detection with YOLO” tutorial enabled an inventory tracking system. The pre-trained model and Python script helped us deploy a solution that cut manual counts by 90%, saving 15 hours weekly. ...
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“Feature Map Flow, FMF” for 3D object detection and tracking, considering time-spatial feature map aggregation from different timesteps of deep neural model inference. Several versions of the FMF are proposed: from common concatenation to context-based feature map fusion and odometry usage for ...
In general, a Kalman filter can be described as a recursive filter that estimates the future state of an object. In this case, the object is a line. The state of the line is based on its location and its motion path across several frames. Along with the road state itself, the Kalman...
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This feature is used when computing the confidence of either a prediction or of making no prediction at all (NULL). You should expect an empty field with high confidence for missing values that are mostly empty in the training set too. Can confidence scores alter if an optional field is ...