The company’s researchers have developed a technique that is said to enable robots to accurately determine graspable object positions through physical interaction, eliminating the need for specialized sensors
SAN FRANCISCO—OSARO®, a developer of machine-learning-enabled robotics for high-volume fulfillment centers, has secured a patent for “Computer-Automated Robot Grasp Depth Estimation,” a technology that is reported to enhance robotic grasping without using specialized sensors.
The patent (USPTO #12,236,340, Ben Goodrich et al, February 25, 2025), describes techniques whereby pick-and-place robots collect data through physical interaction with objects, and use the data to train machine-learning models that can accurately estimate the depth of objects in relation to their surroundings, according to a release from OSARO.
The company said its latest robotics innovation is particularly applicable in the demanding environment of fulfillment warehouses, where robots must adapt to constantly changing inventory, diverse product types, and challenging grasping scenarios. When equipped with OSARO’s depth-estimating software, a component of OSARO SightWorks™ platform, robots can handle new SKUs without reprogramming. They can also estimate depth across diverse objects and grasp irregular or deformable items—significantly boosting efficiency in today’s fast-paced fulfillment centers, the release stated.
“Our kitting and bagging customers require robots that can accurately grasp a wide variety of challenging items. These can range from plush toys to reflective objects to bagged apparel,” said OSARO Vice President of Operations Gemma Ross, in the release. “This latest innovation from OSARO’s labs enables robots to grasp these challenging items more accurately and efficiently, even in cluttered and unstructured environments. It also means we can reduce the cost of the deployed solution since it is less dependent on special sensors and lighting.”
OSARO’s patented depth-perception technology uses self-supervised learning, enabling the robot to estimate depth by analyzing images and arm movements from both successful and failed grasping attempts. By repeatedly attempting to grasp objects and analyzing the resulting images and arm positions, the robot can accurately estimate the depth of objects without relying on costly depth-sensing technologies.
“Imagine a robot trying to grab a small toy in a classic warehouse tote,” said Ross. “Each time it tries to grasp, it learns a little more about how far away the toy is. Eventually, it will be able to successfully determine the distance of the toy every time. Most importantly, it does this automatically without a human in the loop to annotate the information required to train a machine-learning model.”
OSARO provides AI-powered robotics technology for the e-commerce, logistics, and manufacturing industries. The company’s advanced machine-learning software enables industrial robots to perceive, grasp, and manipulate a wide variety of objects, streamlining complex tasks like piece-picking, kitting, and auto-bagging. With this patent, the company said it is continuing “to push the boundaries of AI-powered robotics, delivering industry-first solutions that improve accuracy, efficiency, and adaptability in automated fulfillment warehouses.”