The invention generally relates to perception systems, and relates in particular to scanning systems for use in connection with robotic and other sortation systems that are intended to be used in dynamic environments requiring the robotic or other sortation system to accommodate processing a variety of types of objects.
For example many order fulfillment operations achieve high efficiency by employing a process called wave picking. In wave picking, orders are picked from warehouse shelves and placed at locations (e.g., into bins) containing multiple orders that are sorted downstream. At the sorting stage individual articles are identified, and multi-article orders are consolidated, for example into a single bin or shelf location, so that they may be packed and then shipped to customers. The process of sorting these articles has traditionally been done by hand. A human sorter picks an article from an incoming bin, finds a barcode on the object, scans the barcode with a handheld barcode scanner, determines from the scanned barcode the appropriate bin or shelf location for the article, and then places the article in the so-determined bin or shelf location where all articles for that order have been defined to belong. Automated systems for order fulfillment have also been proposed. See for example, U.S. Patent Application Publication No. 2014/0244026, which discloses the use of a robotic arm together with an arcuate structure that is movable to within reach of the robotic arm.
Other ways of identifying items by code scanning either require manual processing, or require that the code location be controlled or constrained so that a fixed or robot-held code scanner (e.g., barcode scanner) can reliably detect it. Manually operated barcode scanners are generally either fixed or handheld systems. With fixed systems, such as those used at point-of-sale systems, the operator holds the article and places it in front of the scanner so that the barcode faces the scanning device's sensors, and the scanner, which scans continuously and decodes any barcodes that it can detect. If the article is not immediately detected, the person holding the article typically needs to vary the position or rotation of the object in front of the fixed scanner, so as to make the barcode more visible to the scanner. For handheld systems, the person operating the scanner looks for the barcode on the article, and then holds the scanner so that the article's barcode is visible to the scanner, and then presses a button on the handheld scanner to initiate a scan of the barcode.
Automatic barcode scanners are similarly either fixed or hand-held systems, and the same principles apply. In the case of barcode scanners typically used in industrial applications, the possible positions of barcodes must be tightly controlled so that they are visible to the one or more scanners. For example, one or more barcode scanners may be placed in fixed locations relative to a conveyor so that they can scan items, typically boxes, as they pass by scanners. See, for example, U.S. Pat. No. 5,495,097. In these installations the range of placement of the barcodes is comparatively limited as the barcodes are on labels affixed to one of four sides or top or bottom (e.g., if upside down) of a box, which can be presented using simple mechanical means, at orientations optimal for scanning.
In all of these cases, the systems employ sensors, cameras or laser reflectivity sensors, as well as software to detect barcodes and decode them. These methods have inherent limitations that include the range of distances of orientations relative to the detection system, over which they are able to reliably scan barcodes. Firstly, the barcode must be facing the scanner; secondly the range to the barcode must be such that individual elements can be reliably distinguished; and, thirdly, the tilt and skew of the barcode must be such that individual elements can be reliably distinguished. The types of sensors employed, and the robustness of the software detection and decoding schemes determine these performance parameters.
There remains a need, therefore, for an object identification system for robotic and other sortation systems that is able to accommodate the automated identification and processing of a variety of objects in a variety of orientations.
In accordance with an embodiment, the invention provides a drop perception system that includes an open housing structure having an internal volume, an open top and an open bottom, and a plurality of perception units positioned to capture perception data within the internal volume at a plurality of locations between the open top and the open bottom of the open housing.
In accordance with another embodiment, the invention provides a perception system for assisting in identifying an object, the perception system including a plurality of perception units that are each positioned to be directed toward different portions of an object path that an object takes as the object travels through the perception system without assistance by any mechanical conveyance system in contact with the object.
In accordance with a further embodiment, the invention provides a drop perception system for identifying an object, the drop perception system including a plurality of perception units that are each positioned to be directed toward different portions of an object path that an object may take as the object falls through the drop perception system, and each perception unit is engageable to provide perception data regarding the object.
In accordance with a further embodiment, the invention provides a method of sorting objects. The method includes the steps of dropping an object into a perception system that includes a plurality of perception units that are each positioned to be directed toward different portions of a path that the object may take as the object falls through the perception unit, and engaging the perception units to capture perception data associated with the object.
The following description may be further understood with reference to the accompanying drawings in which:
The drawings are shown for illustrative purposes only.
In accordance with an embodiment, the invention provides a novel object perception system for the purposes of automatically sorting individual objects in a set. In applications such as order fulfillment, articles or goods are collected into heterogeneous sets and need to be sorted. Individual objects need to be identified and then routed to object-specific locations. The described systems reliably automate the identification of such objects by employing automated scanners. The scanners look for a variety of codes such as indicia (e.g., barcodes, radio frequency tags, Stock Keeping Unit (SKU), Universal Product Code (UPC), Digimarc DWCode, etc.).
Operating in conjunction with a robotic pick and place system, systems in accordance with various embodiments of the invention automate part of the sorting process, in particular the step of identifying picked objects. Instead of a person picking the object from a bin for example, a robotic arm picks an article from a bin. The object is passed in front of a plurality of barcode scanners, and then, having obtained identification codes for the object, the object is then routed to the appropriate bin or shelf location. Since barcode scanners employ cameras or lasers to scan 1D or 2D symbologies printed on labels affixed to objects, the barcodes must be visible to the scanner's sensors for successful scanning in order to automatically identifying items in a heterogeneous stream of arbitrary objects, as in a jumbled set of objects found in a bin.
Whereas fixed industrial scanners require that the object's barcode be situated so that its barcode is visible to a scanner, the robotic arm of the present invention may pick an object out of a heterogeneous collection of objects where the barcode is not visible and drop the object into a perception system of the present invention. In other embodiments, the system may provide that objects are dropped into the perception system by providing a feed conveyor positioned above the perception system, and providing that objects are singulated on the conveyor. The result is an automated barcode scanning system for arbitrary objects in a heterogeneous stream of objects that can be used to accurately and reliably identify the objects.
Sorting for order fulfillment is one application for automatically identifying objects from a heterogeneous object stream. Barcode scanners have a wide variety of further uses including identifying the stock keeping unit of an article, or tracking parcels. The described systems may have many uses in the automatic identification and sortation of objects.
In accordance with various embodiments, therefore, the invention provides a method for determining the identity of an object from a collection of objects, as well as a method for scanning the barcode of an object employing one or more scanners and a sortation system for differently processing different objects. The invention further provides a method for determining the placement of fixed barcode scanners so as to maximize the probability of successfully scanning an object selected by a robot end-effector in accordance with certain embodiments, as well as a method for determining whether multiple objects are dropped into the scanner at the same time.
An important aspect is the ability to identify via barcode or other visual markings of objects by employing a perception system into which objects may be dropped. Automated scanning systems would be unable to see barcodes on objects that are presented in a way that their barcodes are not exposed or visible. As shown in
The perception system may be used in certain embodiments, with a robotic system that may include a robotic arm equipped with sensors and computing, that when combined is assumed herein to exhibit the following capabilities: (a) it is able to pick objects up from a specified class of objects, and separate them from a stream of heterogeneous objects, whether they are jumbled in a bin, or are singulated on a motorized or gravity conveyor system; (b) it is able to move the object to arbitrary places within its workspace; (c) it is able to place objects in an outgoing bin or shelf location in its workspace; and, (d) it is able to generate a map of objects that it is able to pick, represented as a candidate set of grasp points in the workcell, and as a list of polytopes enclosing the object in space.
The allowable objects are determined by the capabilities of the robotic system. Their size, weight and geometry are assumed to be such that the robotic system is able to pick, move and place them. These may be any kind of ordered goods, packages, parcels, or other articles that benefit from automated sorting. Each object is associated with a stock keeping unit (SKU), which identifies the item.
The manner in which inbound objects arrive may be for example, in one of two configurations: (a) inbound objects arrive piled in bins of heterogeneous objects; or (b) inbound articles arrive by a moving conveyor. The collection of objects includes some that have exposed bar codes and other objects that do not have exposed bar codes. The robotic system is assumed to be able to pick items from the bin or conveyor. The stream of inbound objects is the sequence of objects as they are unloaded either from the bin or the conveyor.
The manner in which outbound objects are organized is such that objects are placed in a bin, shelf location or cubby, into which all objects corresponding to a given order are consolidated. These outbound destinations may be arranged in vertical arrays, horizontal arrays, grids, or some other regular or irregular manner, but which arrangement is known to the system. The robotic pick and place system is assumed to be able to place objects into all of the outbound destinations, and the correct outbound destination is determined from the SKU of the object.
It is assumed that the objects are marked in one or more places on their exterior with a visually distinctive mark such as a barcode or radio-frequency identification (RFID) tag so that they may be identified with a scanner. The type of marking depends on the type of scanning system used, but may include 1D or 2D barcode symbologies. Multiple symbologies or labeling approaches may be employed. The types of scanners employed are assumed to be compatible with the marking approach. The marking, either by barcode, RFID tag, or other means, encodes a symbol string, which is typically a string of letters and numbers. The symbol string uniquely associates the object with a SKU.
The operations of the systems described above are coordinated by the central control system 20. This system determines from symbol strings the SKU associated with an object, as well as the outbound destination for the object. The central control system is comprised of one or more workstations or central processing units (CPUs). The correspondence between SKUs and outbound destinations is maintained by the central control system in a database called a manifest. The central control system maintains the manifest by communicating with a warehouse management system (WMS).
During operation, the broad flow of work may be generally as follows. First, the system is equipped with a manifest that provides the outbound destination for each inbound object. Next, the system waits for inbound objects to arrive either in a bin or on a conveyor. The robotic system may pick one item at a time from the input bin, and may drop each item into the perception system discussed above. If the perception system successfully recognizes a marking on the object, then the object is then identified and forwarded to a sorting station or other processing station. If the object is not identified, the robotic system may either replace the object back onto the input conveyor and try again, or the conveyor may divert the object to a human sortation bin to be reviewed by a human.
The sequence of locations and orientations of the perception units are chosen so as to minimize the average or maximum amount of time that scanning takes. Again, if the object cannot be identified, the object may be transferred to a special outbound destination for unidentified objects, or it may be returned to the inbound stream. This entire procedure operates in a loop until all of the objects in the inbound set are depleted. The objects in the inbound stream are automatically identified, sorted, and routed to outbound destinations.
In accordance with an embodiment therefore, the invention provides a system for sorting objects that arrive inbound bins and that need to be placed into a shelf of outbound bins, where sorting is to be based on a unique identifier symbol. Key specializations in this embodiment are the specific design of the perception system so as to maximize the probability of a successful scan, while simultaneously minimizing the average scan time. The probability of a successful scan and the average scan time make up key performance characteristics. These key performance characteristics are determined by the configuration and properties of the perception system, as well as the object set and how they are marked.
The two key performance characteristics may be optimized for a given item set and method of barcode labeling. Parameters of the optimization for a barcode system include how many barcode scanners, where and in what orientation to place them, and what sensor resolutions and fields of view for the scanners to use. Optimization can be done through trial and error, or by simulation with models of the object.
Optimization through simulation employs a barcode scanner performance model. A barcode scanner performance model is the range of positions, orientations and barcode element size that a barcode symbol can be detected and decoded by the barcode scanner, where the barcode element size is the size of the smallest feature on the barcode. These are typically rated at a minimum and maximum range, a maximum skew angle, a maximum pitch angle, and a minimum and maximum tilt angle.
Typical performance for camera-based barcode scanners are that they are able to detect barcode symbols within some range of distances as long as both pitch and skew of the plane of the symbol are within the range of plus or minus 45 degrees, while the tilt of the symbol can be arbitrary (between 0 and 360 degrees). The barcode scanner performance model predicts whether a given barcode symbol in a given position and orientation will be detected.
The barcode scanner performance model is coupled with a model of where barcodes would expect to be positioned and oriented. A barcode symbol pose model is the range of all positions and orientations, in other words poses, in which a barcode symbol will expect to be found. For the scanner, the barcode symbol pose model is itself a combination of an article gripping model, which predicts how objects will be held by the robotic system, as well as a barcode-item appearance model, which describes the possible placements of the barcode symbol on the object. For the scanner, the barcode symbol pose model is itself a combination of the barcode-item appearance model, as well as an inbound-object pose model, which models the distribution of poses over which inbound articles are presented to the scanner. These models may be constructed empirically, modeled using an analytical model, or approximate models may be employed using simple sphere models for objects and a uniform distributions over the sphere as a barcode-item appearance model.
The LEDs and cameras therefore encircle the inside of the structure 32, and the cameras are positioned to view the interior via windows that may include a glass or plastic covering (e.g., 44). The structure 32 may be suspended by loop hooks 46 or placed over an opening and hang by brackets 48.
With further reference to
The above process may be repeated any number, m, of times (e.g., 50) (step 1036). After all m repeats have finished, the system confirms that the item has exited the scanner (step 1038). The system then determines whether any codes were found (step 1040), and if not reports and error that no codes were found (step 1046). If a codes was found, the system collects all codes found (step 1042) and determines whether all codes match each other (step 1044). If not, the system reports that more than one item was placed in the scanner (step 1050). If all codes found match each other, the system determines whether more than one item was placed in the scanner (step 1048) by determining whether too much space exists between regions of an item. If so, the system reports that more than one item was placed in the scanner (step 1050). If not, the system reports the identification of the code that was found (step 1052) and engages a sorting path associated with the code that was found (step 1054). If no code was found (step 1046) or if the system detects that more than item was in the scanner (step 1050), the system may ask whether the operator wishes to try the scan again (or may be programmed to do so) (step 1056). If yes, then the system returns the item(s) to the input stream ahead of the drop scanner (step 1058). If not, the system moves the item(s) to a manual sort location for sorting by a person (step 1060).
As discussed above, the output of the processor provides a signal indicative of the identified code of the item in the scanner, and based on this, a sortation system may immediately take action consistent with having the item routed in the desired direction or processing path. For example,
The scanner 32 is coupled to the processor 62 as discussed above, and an output sortation control signal 63 is provided to a sortation system, such as for example, a controller 96 of a conveyor 94 that provides direction routing of items (e.g., 92) to any of a plurality of bins, containers or locations 98, 104, for example by moving in either direction as indicated at C. Items 100 and 102, for example had been routed to location 98, and item 106 had been routed to location 104.
The system may also include an interrupting system that interrupts the falling of an object through the perception system. The interrupting system may be useful, for example, where the item to be scanned is a plastic bag (either opaque or transparent), and particularly, where the identifier code (such as a barcode) is not visible or readily visible by the perception units, for example if the bag is folded and obscures the barcode. With reference to
In other embodiments, the system may include an interrupting element that urges lighter items upward in a reverse direction for a short time. With reference to
Those skilled in the art will appreciate that numerous modifications and variations may be made to the above disclosed embodiments without departing from the spirit and scope of the present invention.
The present application claims priority to U.S. patent application Ser. No. 15/228,692 filed Aug. 4, 2016, and U.S. Provisional Patent Application Ser. No. 62/269,640 filed Dec. 18, 2015, the disclosures of which are hereby incorporated by references in their entirety.
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Number | Date | Country | |
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20180178255 A1 | Jun 2018 | US |
Number | Date | Country | |
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62269640 | Dec 2015 | US |
Number | Date | Country | |
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Parent | 15228692 | Aug 2016 | US |
Child | 15901656 | US |