Towards Object Detection from Motion

09/17/2019
by   Rico Jonschkowski, et al.
0

We present a novel approach to weakly supervised object detection. Instead of annotated images, our method only requires two short videos to learn to detect a new object: 1) a video of a moving object and 2) one or more "negative" videos of the scene without the object. The key idea of our algorithm is to train the object detector to produce physically plausible object motion when applied to the first video and to not detect anything in the second video. With this approach, our method learns to locate objects without any object location annotations. Once the model is trained, it performs object detection on single images. We evaluate our method in three robotics settings that afford learning objects from motion: observing moving objects, watching demonstrations of object manipulation, and physically interacting with objects (see a video summary at https://youtu.be/BH0Hv3zZG_4).

READ FULL TEXT
research
08/10/2016

Object Detection, Tracking, and Motion Segmentation for Object-level Video Segmentation

We present an approach for object segmentation in videos that combines f...
research
05/24/2016

Quickest Moving Object Detection

We present a general framework and method for simultaneous detection and...
research
06/08/2023

2D Supervised Monocular 3D Object Detection by Global-to-Local 3D Reconstruction

With the advent of the big model era, the demand for data has become mor...
research
04/21/2000

Assisted Video Sequences Indexing : Motion Analysis Based on Interest Points

This work deals with content-based video indexing. Our viewpoint is semi...
research
09/22/2011

Detachable Object Detection: Segmentation and Depth Ordering From Short-Baseline Video

We describe an approach for segmenting an image into regions that corres...
research
05/26/2021

Detecting Biological Locomotion in Video: A Computational Approach

Animals locomote for various reasons: to search for food, find suitable ...

Please sign up or login with your details

Forgot password? Click here to reset