Object-recognition systems are beginning to get pretty good — and in the case of Facebook’s face-recognition algorithms, frighteningly good.
But object-recognition systems are typically trained on millions of visual examples, which is a far cry from how humans learn. Show a human two or three pictures of an object, and he or she can usually identify new instances of it.
Four years ago, Tomaso Poggio’s group at MIT’s McGovern Institute for Brain Research began developing a new computational model of visual representation, intended to reflect what the brain actually does. And in a forthcoming issue of the journal Theoretical Computer Science, the researchers prove that a machine-learning system based on their model could indeed make highly reliable object discriminations on the basis of just a few examples.
In both that paper and another that appeared in October in PLOS Computational Biology, they also show that aspects of their model accord well with empirical evidence about how the brain works.
“If I am given an image of your face from a certain distance, and then the next time I see you, I see you from a different distance, the image is quite different, and simple ways to match it don’t work,” says Poggio, the Eugene McDermott Professor in the Brain Sciences in MIT’s Department of Brain and Cognitive Sciences. “In order solve this, you either need a lot of examples — I need to see your face not only in one position but in all possible positions — or you need an invariant representation of an object.”
An invariant representation of an object is one that’s immune to differences such as size, location, and rotation within the lane. Computer vision researchers have proposed several techniques for invariant object representation, but Poggio’s group had the further challenge of finding an invariant representation that was consistent with what we know about the brain’s machinery.
Page 1 of 2
Suggested Items
Taiwan's PCB Industry Chain Is Expected to Grow Steadily by 5.8% Annually in 2025
05/05/2025 | TPCAAccording to an analysis report jointly released by the Taiwan Printed Circuit Association (TPCA) and the Industrial Technology Research Institute's International Industrial Science Institute, the total output value of Taiwan's printed circuit (PCB) industry chain will reach NT$1.22 trillion in 2024, with an annual growth rate of 8.1%.
Dixon, Inventec Form JV for PC Manufacturing in India
05/05/2025 | DixonDixon has entered into Joint Venture Agreement (JV Agreement) with Inventec. Pursuant to the said JV Agreement, Dixon IT Devices Private Limited (JV Company) will be 60% owned by Dixon and 40% owned by Inventec.
IT Distribution Records Strong Revenue Growth in Q1 Fueled by Personal Computing Purchases Amidst Tariff Uncertainty
05/02/2025 | IDCSales through distribution in North America posted a second consecutive quarter of growth in the first quarter of 2025. Distributor Revenues came in at $19.9B which is a 7.6% increase year-over-year, according to the International Data Corporation (IDC) North America Distribution Track e r (NADT).
Manncorp Launches Industry-First 'Build Your Own SMT Line' Tool
05/02/2025 | ManncorpManncorp, a leading supplier of SMT (Surface Mount Technology) equipment, proudly announces the official launch of its “Build Your Own SMT Line” tool – a first-of-its-kind resource in the electronics manufacturing industry. Introduced just one month ago, this revolutionary online feature gives manufacturers the unprecedented ability to design a complete SMT production line tailored to their exact needs – all from their desktop.
LG Innotek to Build FC-BGA into 700 Million USD Business with State-of-the-art Dream Factory
05/01/2025 | PR NewswireLG unveiled the Dream Factory, a hub for the production of FC-BGAs (Flip Chip Ball Grid Arrays), the company's next-generation growth engine, to the media for the first time and announced it on the 30th April.