Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Zero Experience Required: Plug & Play Modular Transfer Learning for Semantic Visual Navigation

About

In reinforcement learning for visual navigation, it is common to develop a model for each new task, and train that model from scratch with task-specific interactions in 3D environments. However, this process is expensive; massive amounts of interactions are needed for the model to generalize well. Moreover, this process is repeated whenever there is a change in the task type or the goal modality. We present a unified approach to visual navigation using a novel modular transfer learning model. Our model can effectively leverage its experience from one source task and apply it to multiple target tasks (e.g., ObjectNav, RoomNav, ViewNav) with various goal modalities (e.g., image, sketch, audio, label). Furthermore, our model enables zero-shot experience learning, whereby it can solve the target tasks without receiving any task-specific interactive training. Our experiments on multiple photorealistic datasets and challenging tasks show that our approach learns faster, generalizes better, and outperforms SoTA models by a significant margin.

Ziad Al-Halah, Santhosh K. Ramakrishnan, Kristen Grauman• 2022

Related benchmarks

TaskDatasetResultRank
Image-Goal NavigationGibson (A)
Success Rate29.2
22
ObjectNav (Label goal)Gibson tiny (test)
Success Rate27.9
20
Image-Goal NavigationMP3D (test)
Success Rate14.6
19
Image-Goal NavigationGibson Curved trajectories (unseen)
Succ (Easy)41
12
ObjectNav (Audio goal)Gibson tiny (test)
Success Rate18
10
ObjectNav (Audio)Gibson (test)
Success Rate18
10
ObjectNav (Label)Gibson (test)
Success Rate21.9
10
ObjectNav (Sketch goal)Gibson tiny (test)
Success Rate22
10
ObjectNav (Sketch)Gibson (test)
Success Rate22
10
RoomNav (Label)Gibson (test)
Success Rate27.9
10
Showing 10 of 15 rows

Other info

Code

Follow for update