diff --git a/src/pages/index.mdx b/src/pages/index.mdx index eff8141..30d72ca 100644 --- a/src/pages/index.mdx +++ b/src/pages/index.mdx @@ -143,7 +143,7 @@ During online training, we fine-tune using ## Experimental Evaluation - +We evaluate the effectiveness with which PROGRESSOR learns reward functions from visual demonstrations that enable robots to perform various manipulation tasks in simulation as well as the real world.
@@ -175,8 +175,8 @@ the transparent area denotes standard deviation. PROGRESSOR demonstrates clear a ### Real-World Robotic Experiments #### Pretraining on Kitchen Dataset -We randomly sample frame triplets triplet () from the videos ensuring a maximal frame gap . - +We randomly sample frame triplets triplet () from the videos ensuring a maximal frame gap . +
#### Real-World Few-Shot Offline Reinforcement Learning with Noisy Demonstrations We compare PROGRESSOR with R3M and VIP by freezing the pre-trained models and using them as reward prediction models to train RWR-ACT on downstream robotic learning tasks. @@ -185,7 +185,7 @@ We compare PROGRESSOR with R3M and VIP by fr
### Zero-shot Reward Estimation For in-domain and out-domain Videos - +